Essay Writing Service

Bacterial Contaminants and Heavy Metal Accumulating Potentials of Fin-fishes from Humic Freshwater

do not necessarily reflect the views of


The bacterial contaminants and heavy metal accumulating potentials of fin-fishes (Synodontis obesus and Marcusenius senegalensis) from the humic ecosystem of Eniong River, Akwa Ibom State were investigated. The results obtained revealed that the bacterial   loads varied with the type of fin-fish and were much higher in fish intestines, when compared with the skin and gills. The heterotrophic bacterial loads obtained exceeded the 1.2 x 105cfu/g limit recommended for fresh fishes. High and unsafe fecal coliform (1.1 ± 0.1 x 103cfu/g -2.0 +0.39x 103cfu/g) loads were also obtained. Heavy metal analysis also revealed the presence of Cd, Cr, Cu, Ni and Pb in the humic sediment. Concentrations of Cd (4.71 ± 0.34 to 4.91± 0.39 mg/kg), Cr (18.06 ± 5.78 to 20.22 ± 1.11 mg/kg), Cu (35.33 ± 3.25 to 40.28  ± 2.44 mg/kg), Ni (2.16 ± 0.07 to  2.26 ± 0.18 mg/kg) and Pb (175.85 ± 7.75 to 191. 08 ± 20.11 mg/kg) were found in the order Pb>Cu>Cr>Cd>Ni. Sequential extraction method (SEM) of analysis revealed the poor bioavailability status of heavy metals in sediment. It also showed that the percentage of bio-available and non-bio-available fractions of metals in sediment varied with the type of metals. Cu with 62.04% availability rate was the most bio-available element, as against Pb with 25.22 % availability rate. These correspond to their 32.4 % and 65.2 % residual potency rates. The calculated Biota to Sediment Accumulating Factor values for heavy metals in the fin-fishes revealed varied levels of accumulation in fishes. Cu (3.73±1.39mg/kg) in Synodontis obesus was the most accumulated. However, analysis of the bio-accumulation factors (BCF values) revealed generally low accumulation determined by fish type as well as the metal fractions and bio-available status. The results indicate the poor microbiological quality and poor potential of the fin-fishes as sentinel organism for metals contamination monitoring. These call for proper processing of aquatic foods  as well as routine monitoring (but with alternative sentinels) to arrest the growing influence of anthropogenic activities on the level of heavy metals in Eniong River.

Keywords: Heavy metals, Freshwater, Fin-fishes, Bacterial Contaminants and Humic



In recent years contamination of aquatic environment by metals has risen as a result of increased industrial activities and attendant population surge especially around littoral zones which directly influences the quality of domestic wastes laden with heavy metals. Despite the natural sources of heavy metals in the environment, anthropogenic supply to aquatic ecosystems from industrial effluents/wastes, agricultural and domestic waste waters laden with metal toxicants outweighs the former. Heavy metal pollution is an important environmental problem (Benson et al., 2006), considering that some are hazardous substances and can bioaccumulate in the environment, plant and animal tissues (Zweig et al., 1999).

Heavy metals enter aquatic environment from natural and human activities (Amisah et al., 2009). Due to industrialization, the number of factories and pollution has increased rapidly. The contamination of water bodies with a wide range of pollutants has become a matter of concern over the last few years (Javed and Usmani, 2011). The natural aquatic ecosystems have extensively been contaminated with heavy metals released from domestic, industrial and other man-made activities (Velez and Montoro, 1998). Sediments are an important sink for trace metals especially in river mouth ecosystems. In some cases, sediments may contain 99% of the total amount of trace metalsexisting in aquatic systems(Renfro, 1973). It is known that metals accumulate on sediment surface, in benthic living things, planktonic organisms and other living matter and is enhanced through food chain. Fish accumulate xenobiotic compounds, especially those with high water solubility because of the very intimate contact with the medium that carries the compounds in solution, suspension and also because fish have to extract oxygen from the medium by passing the enormous volumes of water over gills. For fish, skin and digestive tract are potential sites of absorption of water soluble chemicals. The chemical once absorbed is transported by the blood to either a storage point, such as bone or to the liver for transportation. If transported by the liver it may be stored there, excreted in bile or passed back into the blood for possible excretion by kidney or gills or stored in extra hepatic tissues such as fat (Javed and Usmani, 2011).

Among the many pollutants, heavy metals show environmental persistence, toxicity at low concentration and ability to incorporate into food chain of aquatic organisms (Marichamy et al., 2011). Due to the deleterious effect of metals on aquatic ecosystem, it is necessary to monitor their accumulation in fishes. The higher the metal concentrations in the environment the more it may be taken up and accumulated by fish (Jezierska and Witeska, 2006). They emphasized that tissue metal level is related to its waterborne concentration only if metal is taken up by the fish from water. The trophic transfer of trace metals from water to aquatic animals of high trophic levels has been reported (Nguyen et al., 2014).  Ikemoto et al. (2008) reported that significant trophic levels dependence was found in concentrations of Se, Rb and Hg at Hau River in Vietnam. The same researchers also revealed that the bio-magnification profiles of trace metals (Mn, Cu, Zn, Sr, Mo, Ag, Cd, Sb, Cs, Ba, T1 and Pb) were significantly higher in crustaceans, whereas fishes showed higher concentrations of Cr, Pb and Hg). Their findings showed variations in the metal accumulating potentials of diverse fish forms and species in aquatic systems.

Additionally, there are many distinct habitats in the freshwater ecosystem and each is characterized with its communities of microorganisms. For example, the humic freshwater sediment comprises larger amounts of organic deposits in the seafloor, and the source of these humic components or materials may be from the accumulation of dead plants and animals of the lake or stream, which on decomposition settles at the bottom of the water, thereby forming the river-bed sediment (Aiken et al., 1996). This river-bed sediment provides a nutrient-rich dwelling ecosystem for bottom animals, as well as other microorganisms. Recent reports by researchers indicate that the freshwater bottom sediment is highly characterized with various bacterial species which may include those of the genera: Pseudomonas, Bacillus, Azotobacter, Micrococcus, Enterococcus, Acromobacterium, Salmonella, Shigella, Enterobacter, Citrobacter, Flavobacterium and Escherichia species. While the fungal species commonly isolated include those of the genera, Penicillium, Aspergillus, Candida, Fusarium, Geotricum, and Saccharomyces species respectively (Del-Giorgio and Cole, 2000). These microorganisms play important roles during the mineralization of complex organic and other toxic chemical pollutants present in the freshwater sediment.

Heavy metals impact both the physiology and ecology of microorganisms (Sandrin and Maier, 2003) and are known to inhibit a broad range of microbial processes including methane metabolism, growth, nitrogen and sulphur concentration. Metals generate many of their deleterious effects through the formation of free radicals, resulting in DNA damage, lipid per oxidation and depletion of protein sulphydryl (Valko et al., 2005). In response to toxic concentrations of heavy metals, many organism including microorganisms can develop tolerance (Klerks and Weiss, 1987), resulting in the detoxification of such heavy metals. The development of heavy metal tolerance by microorganisms presents the possibility of utilizing and optimizing microbial mediated reactions as a strategy for removing metal contaminants from the environment. In addition, environmental components may have considerable influence on toxicity and therefore apparent toxicity.

On the other hand, bacteria are known to be ubiquitous in nature and they inhabit most of our food products including fin-fishes. Vibrios of sea-food origin have attracted increasing attention from time to time as it is found to be one of the important causes of food poisoning in man. The majority of outbreaks have also been epidemiologically traced to the consumption of fishes and shellfishes originating from warm coastal waters (Quintoil et al., 2007). Human infections caused by pathogens transmitted from fish or the aquatic environment are quite common depending on the season, patients’ contact with fish and related environment, dietary habits and the immune system status of the exposed individual. They are often bacterial species that are facultative pathogens of both fish and man and may be isolated from fish without apparent symptoms of disease. The infection source may be fish kept either for food or as a hobby (Novotny et al., 2004).  

Studies have also been conducted on the heavy metal concentrations in fishes from rivers in Nigeria. The presence of unacceptable levels of Hg and Pb in the tissues of the African catfish, Clarias gariepinus from River Niger has been reported (Lawani and Alawode, 1996). Omoregie et al.  

(2002) also reported enhanced levels of Pb, Cu and Zn in Oreochromis nilotica (Nile Tilapia) from

110 River Delimi. However, literatures on elemental burdens in fishes from humic freshwater ecosystem 111 are not available and little or no work has been done on the bioaccumulation of pathogenic bacterial 112 loads and heavy metals in fin-fishes from a humic ecosystem. This is despite the incessant cases of

113 crude oil pollution in the Niger Delta of Nigeria. Therefore this study is focused on bacterial 114 contaminants and heavy metal accumulating potentials of fin-fishes (Synodontis obesus and

115  Marcusenius senegalensis) from humic freshwater


117  MATERIALS AND METHODS 118  2.1  Study Area

119 The study area is a humic ecosystem of Eniong River, a tributary of the middle course of the 120 Cross River located in South-Eastern coast of the Niger Delta region of Nigeria (Figure 1). The

  1. freshwater ecosystem is unique and the river is characterized by intense colouration due to the
  2. presence of humic substances and possibly soluble iron. The ecosystem is home to diverse species of 123 fish resources and supports remarkable populations of fin-fishes including Synodontis obesus and 124 Marcusenius senegalensis that are widely consumed by the catchment communities in Itu Local 125 Government Area of Akwa Ibom State.


Figure 1: Location of the humic freshwater Eniong River in Itu Local Government Area where the fishes were harvested

127  2.2  Sample Collection and Preparation

128 Twenty samples of four different fish species (Synodontis obesusClarias gariepinus, 129 Coptodon guineensis and Marcusenius senegalensis) were collected during harvest from fishers from

130 Eniong River. The samples were carefully sorted out, separately contained in sterile polythene bags 131 sealed, labeled and preserved in an ice packed boxes. The samples were immediately within (2-3 132 hours of sampling) transported to the laboratory for analysis. Representative samples of the fin-fish 133 stocks collected were also taken to the Department of Fisheries, University of Uyo for identification. 134 Also collected were sediment sample with the aid of a metal grab sampler, samples were collected 135 from five different locations, and was stored in clean glass bottles, preserved in iced packed coolers 136 and transported to the laboratory for analysis.

  1.           In the Laboratory, the fin fishes were aseptically dissected.  The organs (skin and intestine)
  2.           were removed and macerated using a sterile pestle and mortar. One gram (1.0g) of each organ sample
  3.           was serially diluted and used for microbiological analysis. The remaining muscle tissue was placed in
  4.           a drying oven at 600C for 4 hours. The dried tissues were then reduced into fine powder in a pestle 141 and mortar, also the sediment samples were digested using ultra pure Nitric acid and heavy metals 142 determined using Atomic Absorption Spectrophotometer (AAS).



  1. Plate II:Scientific name: Marcusenius senegalensis  

147  English name:  Long mouth 148  Local name:  Ono


150  151

  1. Plate IV:Scientific name: Synodontis obesus 154                  English name     Upside down cat fish 155                               Local name:        Ikon Ikon


157  2.3  Analysis of Bacterial Contaminants 158  2.3.1  Serial Dilution of Fish Samples

159 This procedure was carried out to enhance the enumeration of the bacterial load of the 160 samples. Tenfold serial dilution of 1.0g of gills, tissue and intestine of each representative fish sample 161 was carried out as described by Cheesbrough (2006). Here, 1.0g of each sample was added to 9ml 162 sterile water then sequentially diluted to obtain the required dilution.


164  2.3.2   Culture Media Preparation and Sterilization

165 The media used for the study were: Nutrient Agar (NA), MacConkey Agar (MCA), Eosine 166 Methylene Blue Agar (EMBA) and Salmonella–Shigella agar (SSA) for the enumeration and isolation 167 of heterotrophic bacteria, total coliform, feacal coliform (Escherichia coli) and Salmonella and 168 Shigella species respectively.  They were aseptically prepared according to the manufacturer’s 169 instructions, sterilized by autoclaving at 121OC for 15 minutes.


171  2.3.3   Estimation of Bacterial Contaminant

172  The density of heterotrophic and potential pathogens was determined using standard 173 analytical procedures. Staphylococcus aureus, Escherichia coli (fecal coliform) and Salmonella and 174 Shigella loads on the samples was determined using the pour plate technique. All inoculated plates 175 were incubated at 37oC for 24 hours.

176 After 24 hours, discrete colonies that appeared on the culture plates were enumerated with the 177 aid of a Quebec colony counter and recorded as Colony Forming Units (CFU) per gram of fish 178 sample.


180  2.4  Characterization and Identification of the Bacterial Isolates

181 The pure bacterial isolates were grouped into recognizable taxonomic units and characterized to their 182 generic level using standard procedures. The pure isolates were examined for colonial morphology, 183 cultural and biochemical characteristics according to the methods of Cowan (1985) and Chessbrough, 184 (2006).


186  2.5  Determination of Heavy Metals Contaminants 187  2.5.1  Analysis of Heavy Metals in Fin Fishes

188 The analysis of heavy metals was carried out using the method of atomic absorption 189 spectroscopy (APHA, 1992). Only the fish muscles were used for this analysis. Atomic Absorption 190 Spectrometry (AAS) is a technique for measuring quantities of chemical elements present in 191 environmental samples by measuring the absorbed radiation by the chemical element of interest.

192 In this study, the samples (fish and sediment) were digested with ultra-pure nitric acid at 193 100oC until the solution becomes clear. Then the solution were made up to a known volume with 194 deionized distilled water and analyzed for heavy metals (Cadmium, Chromium, Copper, Nickel and 195 Lead) using Atomic Absorption Spectrophotometer (AAS model GPC A932 ver. 1.1). The result 196 obtained was expressed as mg/kg wet weight.


198  2.5.2  Determination of Heavy Metal Accumulation using Bioaccumulation Factors

199 Bioaccumulation factors (BAFs) are multipliers used to estimate concentrations of chemicals 200 that can accumulate in tissues through any route of exposure. It is referred to as bioconcentration

201 factor (BCF) for aquatic invertebrates. The BCF and biota to sediment accumulation factor (BSAF) of 202 heavy metals from sediment or surface water to animal tissues can be determined in different samples 203 using the following equations:

concentration of heavy metal in animal tissue

BCF =  (1)

concentration of heavy metal in water sample


concentration of heavy metal in animal tissue

BSAF =  (2)

concentration of heavy metal in sediment sample


206  2.5.3  Sediment Characterization

  1. The major sediments constituents considered in this study included total organic carbon, silt,
  2. clay and sand. The preparation, extraction and quantitation of benthic sediment samples for the
  3. determination of total organic carbon (TOC) followed the wet chemistry technique as described by 210 Schumacher, (2002). Fine-grained portion of grain-size distributions were determined by 211 sedimentation method (AOAC, 1979).

212  2.5.4  Chemical Fractionation of Sediment and Analysis of Heavy Metal Levels

213 For the purpose of classifying the biloavailable metallic status in each sample, five sequential 214 chemical extractions were performed with the objective of identifying the metal classifications

215  influenced by various environmental conditions: (a) exchangeable, (b) bound to carbonates, (c) bound

to iron and manganese oxides (reducible), (d) bound to organic matter (oxidizable), and (e) residual (Tessier et al., 1979). The selective extraction of fraction A was performed using 1.0 g of sieved sediment at room temperature for one hour with 8.0 mL of 1 M MgCl2 solution at pH 7.0 with continuous agitation. This fraction sometimes known as acid-soluble fraction provides information on the capacity of the sediment to absorb and desorp heavy metals in relation to changes in the ionic composition of the sediment. Sediment residues from fraction A will be leached at room temperature with 8.0 mL of 1 M sodium acetate at a pH of 5.0 (adjusted using acetic acid) with continuous agitation to obtain metals that are associated with carbonates (fraction B). For the reducible fraction (fraction C) extraction, sediment residues obtained from fraction B will be extracted with 20 mL of 0.04 M hydroxyl ammonium chloride in 25% (v/v) acetic acid for 6 hr at 96°C with occasional agitation of the solution. Fraction C constitutes heavy metals associated with iron and manganese oxides and is sensitive to redox potential variations.

2.6   Statistical Analysis of Data

The data was analyzed using the statistical software Pearson’s Correlation Analysis and Factors analysis. Principal Component Analysis (PCA) was employed to explore the interrelationship among heavy metals in sediment and fish samples and identify their probable origin. The analysis was performed with a 95% confidence interval. 



3.1   Results

3.1.1   Microbiological Properties of Fin-fish Samples

The results presented in Tables 1 – 2 showed that the ability of the fin-fishes to accumulate bacterial contaminants varied between the genera of fish analyzed as well as in the fish organs as the fish intestine generally accumulated more bacterial contaminants.

(a)   Bacterial Loads of Fin-fish Skin Samples

The bacterial loads of Synodontis obesus had the least level of skin contamination with densities of heterotrophic bacteria (1.5±0.87 x10– 3.5 ±0.3×105CFU/g of skin scrapings), fecal coliform (0 – 2.3 ±0.87×103CFU/g of skin scrapings) and coliform (2.0 ±0.17×103 to 7.7 ±0.69×104CFU/g of skin scrapings). The salmonella shigella count recorded ranged from 0 to 1.9 ±0.17 x103CFU/g of skin scrapings). On the other hand, the bacterial loads of Marcusenius senegalensis skin samples were 2.2±0.92 x 105– 3.3 ± 0.25×105, 0 and 2.0 +0.39 x 103, 1.0 +0.34 x 103 and 2.5 ± 0.26x 10 and 0 to 1.9 ± 0.1 x 102CFU/g of skin scrapings for heterotrophic bacteria, fecal coliform, coliform and salmonellae shigella respectively.

Table 1: Bacteriological loads of Synodontis obesus skin samples  

Sample (Skin) THBC 

(x 105cfu/g)

Total coliforms (x103cfu/g) Fecal coliforms (x103cfu/g) Salmonella –Shigella  (x102cfu/g)
SO 1 1.5±0.87 2.2 ± 0.92 1.1+0.1 _
SO 2 2.0±0.2 6.3± 3.10 2.3±0.87 1.9 ±0.17
SO 3 3.3 ±0.53 7.7+0.69 1.8 ±0.72 1.5 ±0.44
SO 4 2.8 ± 0.2 2.2 ± 0.2 1.5+ 0.44 _
SO 5 2.6 ± 0.4 2.0 ±0.17 _ _
SO 6 3.5 ± 0.3 2.4 ± 0.26 2.0 ±0.17 1.9 ±0.17
SO 7 2.8 ± 0.2 7.7 ± 0.69 1.80.17 _
Values are mean of triplicate determinations ±SD 

SD = Standard Deviation

Table 2: Bacteriological loads of Marcusenius senegalensis skin sampl

 Sample  THBC 


Total Coliform (x103cfu/g) Fecal Coliform Salmonella Shigella (x103cfu/g) (x102cfu/g)
MS 1   2.3 ±0.27 1.0 +0.34  –  –
MS 2   .2 ±0.92 2.0 ±0.17  1.5 ±0.44  –

 MS 3   3.3 ±0.25  1.8 ±0.72  1.6 + 0.32  1.0 ±0.26

MS 4   2.8 ±0.2  2.0 ± 0.24  1.4 ±0.22  –

MS 5   3.1 ±0.26  2.5 ±0.26  2.0 +0.39  1.9  ±0.1

  1. Values are mean of triplicate determination±SD
  2. SD = Standard Deviation


258  (c)   Bacterial Loads of Fin-fish Intestinal Samples

  1. The bacteriological loads obtained from the intestine of Synodotis obesusis (3) revealed
  2. values that ranged between 2.0 ± 0.26 x 10and 3.5 ± 0.3 x 105CFU/g. The total and fecal coliform 261 counts recorded varied between 2.2 + 0.3 x 103 and 2.9 + 0.53 x 103CFU/g and 1.4 + 0.4 x 10and 2.1

262 + 0.3 x 103CFU/g respectively, while the Salmonella Shigella count obtained ranged between 1.2 ± 263 0.1 x 102 and 1.9 ± 0.17 x 102CFU/g.

  1. For Marcusenius senegalensis (Table 4) the values recorded ranged between 2.4 ±0.35 x 105
  2. and 4.0 ± 0.26 x 105CFU/g, 1.7 + 0.26 x 103 and 2.6 ±0.27 x 10CFU/g, 1.1 + 0.57 x 103 and 2.1 + 0.3
  3. x 103CFU/g and, between 1.0 ± 0.16 x 102 and 1.9 ± 0.07 x 102 heterotrophic bacteria, coliform, fecal 267               coliform and salmonella – shigella counts respectively.


  1. Table 3:  Bacteriological loads of Synodontis obesus intestine samples
Sample THBC 

(x 105cfu/g)

Total Coliform (x 103cfu/g) Fecal Coliform (x 103cfu/g) Salmonella Shigella  (x 102cfu/g)
SO 1 2.3 ± 0.1 2.5 ± 0.5 1.4 + 0.4 1.2 ± 0.1
SO 2 3.2 ± 0.36 2.7 ± 0.26 1.8 ± 0.26 1.3 ± 0.40
SO 3 2.8 ±0.46 2.6 ± 0.26 1.6 ±0.36 1.9 ± 0.17
SO 4 3.0±0.3 2.7 ± 0.26 1.4 ± 0.52 1.5 ± 0.44
SO 5 3.5 ± 0.3 2.7 ± 0.2 1.6 ±0.36 1.7 ±0.17
SO 6 3.0 ± 0.26 2.2 + 0.3 2.1 0.3 1.4 + 0.52
SO 7 2.0 ± 0.26 2.9 0.53 2.0 ± 0.26 1.7 0.34
  1. Values are mean of triplicate determination±SD
  2. SD = Standard Deviation


  1. Table 4:  Bacteriological loads of Muarcusenius senegalensis intestine samples
Sample THBC 


Total Coliform (x103cfu/g) Fecal Coliform (x103cfu/g) Salmonella Shigella (x102cfu/g)
MS 1 4.0 ±0.26 2.0 ±0.36 1.8 ± 0.26 1.0 ±0.45
MS 2 3.0 ±0.1 2.1 ±0.51 1.8 ±0.17 1.2 ±0.27
MS 3 3.2 ±0.44 2.5 ±0.95 2. 1 ± 0.31 1.9 ± 0.07
MS 4 2.4 ±0.35 1.7 ± 0.26 1.1 ±0.57 1.0 ±0.16
MS 5 3.0 ±0.19 2.6 ±0.27 2.1 ±0.3 1.4 ±0.24
  1. Values are mean of triplicate determination ± SD
  2. SD = Standard Deviation


277  3.1.2  Diverse Species of Bacteria Isolated from Fish Samples

278 The cultural and biochemical characteristics of the bacterial isolates that the culture-able 279 bacteria associated with the fin-fishes were Klebsiellasp, Bacillussp, EnterobacterStreptococcussp, 280 Micrococcussp, LactobacillusSerratiasp, Proteussp, Salmonellasp, Shigellasp, and Escherichia coli.


282  3.1.3  Occurrence and Prevalence of Bacterial Species on Fin-fish Samples

283 Analysis of the occurrence of various bacterial isolates on the fin-fish samples of Synodontis 284 obesus and Marcusenius senegalensis are shown on Tables 5 – 6 respectively.



287   288


290  Table 5: Occurrence of bacteria on Synodontis obesus samples

Isolate Gills (n = 7) Skin (n = 7) Intestine (n = 7) Frequency of Occurrence %  of  Occurrence
Staphylococcus sp +(3) +(5) 8 38.1
Bacillus subtilis +(3) +(2) +(4) 9 42.9
Bacillus cereus +(2) +(5) +(2) 9 42.9
Micrococcus sp +(4) +(2) 6 28.6
Streptococcus sp +(6) +(2) 8 38.1
Proteus sp +(3) +(5) 8 38.1
Serratiasp +(3) 3 14.3
Salmonella sp. +(1) +(2) 3 14.3
Shigella sp +(3) 3 14.3
Escherichia coli +(4) +(5) 9 42.9
Enterobacter sp +(5) +(1) +(3) 9 42.9
Klebsiella sp +(3) +(5) 8 38.1
Lactobacillus sp +(2) +(3) 5 23.8


292   293

294  Table 6: Occurrence of bacteria on Marcusenius senegalensis samples

Isolate Gills (n=5) Skin (n=5) Intestine (n=5) Frequency of Occurrence % of 


Staphylococcus sp +(5) +(5) +(5) 15 100
Bacillus subtilis +(4) +(4) 8 53.3
Bacillus cereus +(2) +(2) 4 26.7
Micrococcus sp +(5) +(5) +(5) 15 100
Streptococcus sp +(5) +(2) 7 46.7
Proteus sp +(4) 4 26.7
Serratia sp +(4) +(2) +(2) 8 53.3
Salmonella sp +(2) +(1) +(1) 4 26.7
Shigella sp +(2) +(3) 5 33.3
Escherichia coli +(2) +(4) 6 40.0
Enterobacter sp +(5) +(1) +(3) 9 60.0
Klebsiella sp +(2) +(5) 7 46.7
Lactobacillus sp +(2) +(3) 5 33.3


 3.1.4  Heavy Metal Loads of the Sediment Samples

The result of the heavy metals analysis of the sediment samples presented on Tables 7 revealed variation in loads between sample locations and type of element. Comparison of percent total bio-available and non-bioavailable fractions of metals in the humic sediment (8) revealed differences between total metal concentrations and bio-available values. The result of the analysis showed the total percentage of the bio-available and non-bioavailable faction of the metals in the sediment samples varied with type of metals while their distribution in different geochemical phases of the humic sediment is presented in 9.

Table 7: Comparison of percent total bio-available and non-bioavailable fractions of metals in the

humic sediment samples from Eniong River



Station 1  Station 2.  Station 3  Station 4  Station 5  i=A

Cd  31.47(68.52)  29.76(70.24)  31.11(68.89)  30.76(69.23)  29.93(70.08) 30.61±0.66

Cr  59.71(40.26)  58.63(41.38)  59.55(40.44)  59.87(40.12)  65.68(34.32) 60.69±2.53

 Cu  59.93(40.06)  63.93(36.07)  58.96(41.03)  69.34(30.67)  58.03(41.96) 62.04±4.16

Ni  51.15(48.85)  48.60(51.40)  49.33(50.67)  45.13(54.87)  46.54(53.46) 48.15±2.11

Pb  26.67(73.33)  25.21(74.79)  23.82(76.17)  24.28(75.90)  26.13(73.87) 25.22±1.07

307  ( ) % total of non-bioavailable fraction


309  Table 8: Heavy Metal distribution in different geochemical phases of the humic sediment

Fraction Cd (30.61%) Cr (60.69%) Cu (62.04%) Ni (48.15%) Pb (25.22%)
Residual 62.4 37.3 32.4 46.3 65.2
Oxidizable 17.2 41.7 46.3 21.7 18.2
Reducible 11.3 14.0 15.2 17 9.6
Carbonates 5.1 4.5 6.1 9.5 5
Exchangeable 4.0 2.5 0 5.5 2.0


  1. 3.1.5   Heavy Metal Loads and the Biota to Sediment Accumulation Factors (BSAFs) of the Fin-
  2. fishes from humic ecosystem


314  The concentration of metals detected in the fish samples varied with the fish species (Table 315 10).The Biota to Sediment Accumulation Factors (BSAFs) are multipliers used to estimate concentrations 316 of chemicals that can accumulate in tissues through any route of exposure (US EPA, 2000). It is referred

317 to as bio-concentration factor (BCF) for aquatic invertebrates. Analysis of the bio-concentration factor 318 (BCF) of the metals in fin-fishes from humic ecosystem was also determined using standard protocols. 319 The BCF and biota to sediment accumulation factor (BSAF) of heavy metals from sediment to animal 320 tissues was determined in the different samples using the equations given below: concentration of heavy metal in animal tissue

321  BCF =  (1)

concentration of heavy metal in sediment sample


  1. The results of the BCF for the various metals in the finfish samples are given in Table 11. The
  2. results also revealed variation in the metal bio-accumulating potentials of the fin fishes. It also shows that
  3. of all the metals analyzed, Chromium (Cr) and lead (Pb) exhibited the least level uptake by fishes and had
  4. the least BCF


  1. Table 10: Heavy metals concentrations in the fin-fish samples
Fish sample Cd (mg/kg) Cr (mg/kg) Cu  (mg/kg) Ni (mg/kg) Pb (mg/kg)
M. senegalensis 0.245±0.06 0.018±.0.06 3.73±1.39 0.31±0.07 0.05±0.03
S. obesus 0.259±0.06 0.020±0.01 2.273±0.51 0.173±0.03 0.053±0.02
  1. Note: Values are means of each sample number + SD
  2. SD = Standard Deviation


33        Table 11: Bio-concentrataion factor (BCF) of the various fish samples

Cd Cr Cu Ni Pb
M. senegalensis 0.05±0.19 0.0009±0.03 0.10±0.44 0.14±0.78 0.0003±0.003
S. obesus 0.05±0.19 0.001±0.005 0.06±0.16 0.079±0.3 0.0003±0.002


  1.           Discussion
  2.           Bacteria are widely distributed in nature and are easily accumulated by most of our food products 336 including fishes. According to FFSG (2013), fish communities and specific species are excellent 337 indicators of biological and ecological integrity due to their continuous exposure to water conditions.

338 Fishes display an array of biotic responses such as changes in growth, distribution, abundance related to 339 water pollution as well as has a greater potential of bioaccumulating environmental pollutants.    Fin340 fishes which are among the major class of fish encountered in the freshwater ecosystem of Eniong that 341 constitute an important source of income and aquatic produce for the settlers as well as the nearby 342 community. However, this is not without limitation in microbiological quality.

  1.           This study reveals the high load of bacterial contaminants in Synodontis obesus guineensis and
  2.           Marcusenius senegalensis harvested from Eniong River. High numbers of coliforms, fecal coliform as 345 well as the Salmonella and Shigella were found on the harvested fish samples. The level of bacterial 346 contaminants accumulation however varied with the type of fish, and more contaminants were 347 encountered in the fish intestines than the skin and gill. Slight variation was also noticed on the ability of

the fishes to accumulate the different groups of bacterial contaminants with the skin of S. obesus accumulating more coliforms and fecal coliforms respectively. Salmonella/Shigella count was also readily found on the skin of S. obesus. On the other hand, Salmonella and Shigella were predominant in the intestinal samples of S. obesus.

This findings agrees with previous report by Ajayi (2012), who in his study reported a high bacterial population in catfish from fish pond in Akungba-Akoko community, Nigeria. This he attributed to waste materials discharged into water bodies upon which the fishes inhabit/feed. The variations in the bacterial populations reported in this study is indicative of high bacteria accumulation potential of the finfishes (Hunt, 1977) and may be attributed to various factors such as body size, feeding pattern, physiology and sediment bioturbation characteristics of the fish samples (FFSG, 2013; FAO, 2012).

The culture-able bacteria species associated with the fin-fish samples include Staphylococcus sp,

Klebsiella sp, Bacillus sp, EnterobacterStreptococcus sp, Serratia sp, Proteus sp, Salmonella sp, Shigella sp, and Escherichia coli. Similarly, Shewan, 2000, Okaeme, 2006) have reported different bacterial species from the skin of sea-water fish. Sugita et al. (1997) concluded that the skin of freshwater fishes was the natural habitat of these   bacteria. Some investigations reported that the skin of the Claria species contained Klebsiella sp, Pseudomonas sp. and Micrococcus sp as the predominant genera.The percentage of occurrence of the isolates in the various fish samples was also found to vary with the fish species. In S. obesus, the most prevalent bacterial isolate was B. subtilis, B. cereus, E. coli and Enterobacter sp while the least prevalent was Serratia, Shigella and Salmonella sp.In M. senegalensis, Staphylococcus and Micrococcus sp had the highest prevalent rate of 100%, while B. subtilis, Proteus sp and Salmonella sp had the least prevalent (26.4%). This result agrees with Ajayi (2012), Shewan (2000) and Okaeme (2006), who in their various studies reported S. aureus, Micrococcus sp., and other Enterobacteriaceae as being the most predominant bacteria in freshwater fishes.

In aquatic systems, benthic sediment act as both sink and carrier for heavy metals and could provide valuable information on the pollution pattern and history of such ecosystems (Li et al., 2013).Heavy metals could be released in both particulate and dissolved forms and known to have high affinities for fine-grained sediment. In this study, detectable concentrations of Cd, Cr, Cu, Ni and Pb were found in the humic sediment of Eniong River. This observation is consistent with the high clay and total organic carbon components of sediment, which are known to be a good accumulator of metallic and organic contaminants (Essien et al., 2010; Inam et al., 2012). Furthermore, sediment has been reported as repositories of heavy metals (Tsai et al., 2003). Total heavy metal concentrations in the aquatic ecosystems reflect varying degree of contamination by different metals. Of all the metals analyzed in the sediments from the humic freshwater ecosystems, Pb was the highest (175.85 – 191.08 mg/kg), followed by Cu (35.33 – 40.28 mg/kg), Cr (18.06 – 20.22 mg/kg), Cd (4.71 – 4.91 mg/kg), and Ni (2.16 – 2.28 mg/kg). The highest levels of Pb in the system may be ascribed to emissions from oil-related industries in the Niger Delta region.  The concentrations of each analyzed heavy metal indicated spatial variations between the stations that were characteristically distinctive and correlative with proximity to anthropogenic activities, near-shore area and settlements. Higher concentrations were observed more frequently near the coast (HS-1) of the humic ecosystem resulting in comparable downstream concentration values especially at locations with intense anthropogenic activities. The concentrations of heavy metals generally followed the pattern Pb>Cu>Cr>Cd>Ni. The TOC values ranged from 5.24 ± 0.71 – 9.45 ± 1.45%. The results indicate that the benthic sediments contained comparatively high organic contents, implying high sedimentary metal affinity for humic substances, which might decrease heavy metal bioavailability through complexing (Passos et al., 2010). The silt content of sediments ranged from the lowest value of 11.33±1.02 at HS-1 to 69.96 ± 3.77 % at HS-5 and may also influence the repository.  Sediment-bound metals are primarily associated with different fractions and they are known to exhibit varied bonding strength, which governs their bioavailability in aquatic ecosystems as well as their attendant ecological risk (Bacon and Davidson, 2008; Benson et al., 2013). The sequential extraction method (SEM) employed presents heavy metals in five sediment geochemical fractions (exchangeable + carbonate bound + reducible + oxidizable + residual). The partitioning of heavy metals according to the chemical fractions listed above could have been predominantly influenced by the bonding strengths of the elements, their latent reactivity, and sediment properties (Soon and Bates, 1982). It is generally accepted that the partitioning of heavy metals in environmental matrices provides an indirect assessment of their mobility, bioavailability and the inherent health and environmental risks. Therefore, if the bioavailability of metal is a function of its solubility, then Cu and Cr with low residual rates (32.4 and 37.3 % respectively) are expected to have high bioavailability and pose the greatest risks to humans and the environment. Thus, the bioavailability ranking is: exchangeable > carbonate > Fe-Mn oxide > organic > residual. This order offers only qualitative insights about chemical partitioning of heavy metals viz-à-viz their bioavailability in the labile fractions (exchangeable and carbonate bound). Furthermore, it can be asserted that heavy metals in the mobile or “direct effects” (non-residual) fractions are considered to be more bio-available compared to those found in the residual fraction.

The occurrence of the studied heavy metals (Cd, Cr, Cu, Ni and Pb) in non residual/residual fractions and their bioavailability potentials in benthic sediments of the freshwater ecosystem presented in Tables 7 and 8 have shown that Cu with 62.04% availability rate was the most bio-available element, as against Pb with 25.22 % availability rate. These correspond to their 32.4 % and 65.2 % residual potency rates.

The data of BSAF values for heavy metals in the fin-fishes revealed a significant increase in levels of all the heavy metals in the different fishes. For Synodontis obesus the orders derived are Cu>Cd>Ni >Pb>Cr, while the order of bioaccumulation values for trace metals in Marcusenius senegalensis is Cu>Ni>Cd >Pb>Cr. Relatively highest value for the investigated heavy metals occurred with Cu (2.273±0.51 mg/kg) in Synodontis obesus; and the least accumulated metal occurred with Cr (0.018±.0.06 mg/kg) in Marcusenius senegalensis. The high bioaccumulation level recorded for these heavy metals in tissue of the fin-fishes may be attributed to their low and high residual rates in the humic sediment which determine the metals bioavailability. It shows that the fin-fish genera cannot serve as good bioindicators for monitoring of these heavy metals in polluted humic ecosystem. Surprisingly, the concentrations of Cd, Cr and Pd accumulated by the fin-fishes studied were very low when compared with that of Cu. This might suggest that despite their comparatively poor availability, the fish species investigated may have low retention of Cr and Pd in humic freshwater ecosystem when compared with other aquatic organisms such as oyster and mussels which had been reported to accumulate Cd in their tissues at levels up to 100,000 times higher than the levels observed in the background environment (Rasmussen and Morrissey, 2007).

The presence of high concentrations of Cu in the fin-fishes indicates anthropogenic input and, hence, the metal accumulation potential of the fishes. The concentration of Cu recorded for the fish samples was below the recommended dietary limit of 4 µg/g in aquatic foods (CCME, 1994; Miroslav and Vladimir, 1999) and was far lower than the lethal doses Correlation analysis showed a negative value of -0.12549 which indicated that there was no relationship between the heavy metals concentrations in the sediment and fin-fishes.  Conclusion

The result of this study have revealed that the fin fishes harbour a high population of diverse bacteria including pathogenic strains of Klebsiella sp, Bacillus sp, EnterobacterSerratia sp, Proteus sp, Salmonella sp, Staphylococcus aureusShigella sp, and Escherichia coli which are commonly associated with human and infant gastroentiritis. The spatial distribution, environmental quality and source apportionment of Cd, Cr, Pb, Ni, and Cu in humic sediment of Eniong River and fin-fishes investigated have shown that heavy metals exhibited significant variability between sampling sites and the fin-fish species and values obtained for most of the metals, except Cu were low and did not exceed the FAO/WHO recommended guideline values. Our results indicate that the fin -fishes may not serve as sentinel organism for biomonitoring of Cr, Ni and Pb in humic freshwater ecosystem. However, the estimation of BSAF values derived showed that the fin-fishes evidently have the ability to bio-concentrate heavy metals in their edible tissues without apparent ill effect. The high bio-available level of Cu in sediment despite its uptake by the fishes portends danger implying that the aquatic ecosystem and some biota may be exposed to short- and long-term Cu metal pollution.


Aiken, G. R., Mcknight, D., Thorn, K., and Thuman, E. (1996) Geochemistry of Aquatic Humic Substances in the Lake Fryxell Basin, Antarctica. Biogeochemistry, 34,157-188.

Ajayi, A. O. (2012). Bacteriological Study of Catfish, Claria gariepinus, from Fish Pond Sources in Akungba-Akoko Community, Nigeria. British Microbiology Research Journal, 2(1):1-9.

Amisah, S., Adjei – Boateng, D., Obirikorang, K. A. and Quagrainie, K. K. (2009). Effects of Clam Size on Trace Metal Accumulation in Whole Soft Tissues of Galatea aradoxa (born 1778) from the Volta Estuary, Ghana International Journal of Fisheries and Aquaculture, 1(2): 014-021.

AOAC (1979). Methods of Soil Analysis, (12th Editions.) Association of Official Analytical Chemist, Washington, D. C.

APHA (1992). Standard Methods for the Examination of Water and Waste Water. Washington, D. C. American Public Health Association.

Bacon, J. R. and Davidson, C. M. (2008): IS there a Future for Sequential Chemical Extraction? Analyst, 133, 25-46.

Benson, N. U., Etesin, M. U., Essien, J. P., Umoren, I. U. and Umoh, M. A. (2006). Tissue Elemental Levels in Fin Fishes from Imo River System, Nigeria: Assessment of Liver/Muscle Concentration Ration. Journal of Fisheries and Aquatic Science, 1, 277-283.

CCME (1994): Interim Canadian Environmental Quality for Contaminated Sites. Report CCME EPC– CS3, Canadian Council of Ministers of Environment, Otawa, ON.

Chessbrough, M. (2006). District Laboratory Practice in Tropical Countries. United Kingdom, Cambridge University Press, p. 416.

Del-Giorgio, P. L. and Cole, J. J. (2000). Bacteria Energertics and Growth Efficiency. Microbial Ecology of the Ocean. New York: John Wiley and sons. Pp. 289-325.

Essien, J. P., Udofia, G. E., Inam, E. and Kim, K. W. (2010). Bioaccumulation of Heavy Metals by Yeasts from Qua Iboe Estuary Mangrove Sediment Ecosystem, Nigeria. African Journal of Microbiology Research, 3, 862 -869.

FAO. (2012). The State of World Fisheries and Aquaculture. Food and Agriculture Organization of the United Nations. Fisheries and Aquaculture Department. Rome, Italy.

FFSG (2013). (Freshwater Fish Specialist Group) Importance of Freshwater Fishes. FFSG Newsletter Hosted by Chester Zoo.

Hunt, D. A. (1974): Indicators of Quality of Shellfish Waters. In A. W. Hoadly & B .J. Dutka (Eds.), Bacterial Indicators/ Health Hazards Associated with Water (9th ed., pp. 337-345). USA

Inam, E., Essien, J., Ita, Basil., Etuk, H. and Kim, Kyoung –Woong (2012): Petroleum Hydrocarbons and Trace Metal Loads in the Mangrove Oyster (Crassostrea rhizosphorae) from the Qua Iboe Estuary and Adjoining Creeks in Nigeria. Gwangju

Javed, M and Usmani, N. (2011): Accumulation of Heavy Metals in Fishes. A Human Health Concern. International Journal of Environmental Science, vol. 2(2): 659-670.

Jezierska, B. and Witeska, M. (2006). The Metal Uptake and Accumulation in Fish Living in Polluted Waters. Soil and Water Pollution Monitoring, Protection and Remediation, pp, 107 -114.

Klerks, P. L. and Weiss, J. S. (1987). Genetic Adaptation to Heavy Metals in Aquatic Organisms: A review. Environmental Pollution, 45, 173 -205.

Lawani, S. A. and Alawode, J. A. (1996). Concentrations of Lead and Mercury in River Niger and its Fish at Jebba, Nigeria. Biological Science Research Communique 8, 47-49.

Li, F., Zeng X-Y, Wu C-H, Duan Z-P, Wen Y-M and Huang G-R. (2013). Ecological Risks Assessment and Pollution Source Identification of Trace Elements in Contaminated Sediments from the Pearl River Delta, China: Biological Trace Elemental Research, 155, 301–313.

Marichamy, G., Shanker, S., Saradha, A., Nazar, A. R. and Badhul-Haq, M. A. (2011). Proximate Composition and Bioaccumulation of Metals in some Finfishes and Shellfishes of Vellar Estuary (South east coast of India). European Journal Experimental Biology, 1 (2): 47 – 55.

Miroslav, R. and Vladimir, N. B. (1999).  Practical Environmental Analysis. Cambridge, UK: The Royal Society of Chemistry, p. 466.

Nguyen, P. D., Dang  Vu, B. H., Nguyen, H. V., Lai, D. P., Trinh, B. H., Seunghee, H. and Yongseok, H. (2014). Trace Metals (Cu, Zn, Pb and Cr) in Mollusca, Sediment and Water at Tien River Estuary – Mekong Delta in Vietnam. Science and Technology for Sustainability – Project Report, 12, 359-371.

Novotny, L., Dvoorska, L., Lorencova, A., Beran, V. and Pavlik, I. (2004). Fish: a Potential Source of Bacterial Pathogens for Human Beings. Veterinary Medicine – Czech, 49 (9): 343 – 358.

Okaeme, A. N. (2006). Fish Diseases Prevention and Control. Paper Presented at the VCN Professional Country Education Seminar, Akure, 8, 1-17.

Omeregie, E., Okoronkwo, M. O., Eziashi, A. C. and Zoakah, A. I. (2002). Metal Concentrations in Water Column, Benthic Macroinventerbrates and Tilapia from Delimi River, Nigeria. Journal of Aquatic Science, 17, 55-59.

Passos, E. D., Alves, J. C., Dos Santos, I. S., Alves, J. D., Garcia, C. A. B. and Spinola Costa A. C. (2010). Assessment of Trace Metals Contamination in Estuarine Sediments using a Sequential Extraction Technique and Principal Component Analysis. Microchemical Journal, 96(1): 50–57.

Quintoil, M. N., Porteen, K. and Pramanik, A. K. (2007). Studies on Occurrence of Vibrio parahaemolyticus in fin fishes and shellfishes from different ecosystem of West Bengal. Livestock Research for Rural Development, 19, 11.

Rasmussen, R. S. and M. T. Morrissey.2007. The Effects of  Processing Methods and Storage on Cadmium Levels in Pacific Oysters (Crassostrea gigas). Journal of Aquatic Food Product Technology, 16, 3-7.

Renfro, W. C. (1973). Transfer of 65Zn from Sediments by Marine Polycheate Worm. Marine Biology, 21, 305-316.

Sandrin, T. R. and Maier, R. M.(2003). Impact of Metals on the Biodegradation of Organic Pollutants. Environmental Health Perspective, 111, 1093-1101.

Schumacher, B. A. (2002). Methods for the Determination of Total Organic Carbon (TOC) in Soils and Sediments: Ecologivcal Risk Assessment Support Center, Office of Research and Development. US Environmental Protection Agency, Las Vegas, N. V. p. 25.

Shewan, J. M. (2000). The Microbiology of Sea Water Fish (Vol. 1). New York. Academic Press, pp 487- 560.

Soon, Y. K. and Bates, T. E. (1982).Chemical Pools of Cadmium, Nickel and Zinc in Polluted Soil and some Preliminary Indications of their Availability to Plants. European Journal of Soil Science, 33, 477-488.

Tessier, A., Campell, P and Bison, M. (1979): Sequential Extraction Procedure for the Speciation of Particulate Trace Metals. Analytical Chemistry: 51(7), 844-850.

Tsai, I. J. Yu, K. C. and Ho, S. T. (2003): Correlation of Iron/ Iron Oxides and Heavy Metals in Sediments of Five Rivers in Southern Taiwan. Diffuse Pollution Conference, Dublin, 14, 19-25.

Valko, M; Morris H. and Cronin, M. T. (2005): Metals, Toxicity and Oxidative Stress. Current Medicinal Chemistry 12, 1161- 1208.

Velez, D. and Montoro, R. (1998). Arsenic Speciation in Manufactured Seafood Products: A Review: Journal of Food Protect, 61, 1240 -1245.

Zweig, R. D., Morton, J. D. and Stewart, M. M. (1999). Source of Water Quality for Agriculture: A Guide for Assessment. The World Bank, Washington, DC.

With Our Resume Writing Help, You Will Land Your Dream Job
Resume Writing Service, Resume101
Trust your assignments to an essay writing service with the fastest delivery time and fully original content.
Essay Writing Service, EssayPro
Nowadays, the PaperHelp website is a place where you can easily find fast and effective solutions to virtually all academic needs
Universal Writing Solution, PaperHelp
Professional Custom
Professional Custom Essay Writing Services
In need of qualified essay help online or professional assistance with your research paper?
Browsing the web for a reliable custom writing service to give you a hand with college assignment?
Out of time and require quick and moreover effective support with your term paper or dissertation?