1. Introduction
Constructed wetlands (CWs) are alternative, easily operated, and cost-efficient systems that can be applied to wastewater (WW) purification, municipal sewage [
1], or the polishing of a wastewater treatment plant (WWTP) effluent [
2]. Moreover, the use of CWs provides additional ecological value as well as social acceptance through the creation of habitats, preservation of wildlife, and recreational added value, making them preferable to conventional engineered systems in terms of ecosystem services [
3]. However, CWs can have disadvantages like low nutrient removal efficiency [
1] as well as limitations regarding microbiological degradation processes with several factors affecting the process like temperature (T) and seasonal variations [
4]. While conventional engineered wastewater treatment has already proven to be efficient in the removal of the majority of pollutants, this comes with the disadvantage of environmental degradation and high energy consumption, amongst others [
5]. Therefore, a potential combination of these natural systems with engineered treatments like oxidation, membrane bio-reactor (MBR), or anaerobic reactors as a pre- or post-treatment can overcome these disadvantages and even enhance the efficiency of these combined systems, as they combine the removal mechanisms of both types [
6].
Constructed wetlands can be classified into three main categories depending on their water flow regime. These are:
Free water surface (FWS) constructed wetlands that have areas of open water and behave similarly to natural wetlands.
Subsurface horizontal flow constructed wetlands (SSHFCW), which typically consist of a gravel bed covered with wetland vegetation. The water flows constantly below the surface of the bed in a horizontal direction.
Vertical flow constructed wetlands (VFCW), where the main difference compared with SSHFCWs is that water percolates vertically through sand or a gravel bed planted with vegetation. The influent enters through perforated pipes which are distributed over the surface in the form of a grid.
Each of these categories demonstrates different layouts, media, efficiency, and flow patterns [
7]. When the end product of wastewater treatment is destined for water reuse applications like drinking water or irrigation, the effective removal of pathogenic bacteria that can be found in the effluents, is of great importance. CWs can remove the remaining micropollutants of conventional WW treatments adequately when they are used as a polishing step. However, recent studies have shown that when they are used as the main wastewater treatment method for agricultural reuse of effluents, they perform poorly on meeting the accepted limit of microbial contamination [
8,
9]. Moreover, the frequency of their usage (mainly in combination with conventional treatment) is increasing under the scope of the circular economy and water reuse applications that continuously come to light [
10]. Therefore, the need for a comprehensive exploration of the performance of CWs on pathogen removal as a standalone wastewater treatment method or as a combined treatment is imperative.
During the last 30 years, a great number of scientific papers and books have been published regarding the characteristics of CWs and their pathogen removal performance [
7,
11,
12]. What is common among these publications is the complexity and heterogeneity that characterizes these natural systems, having rightfully earned the title “black box”. That is because there are various processes of pathogen removal that take place simultaneously and sometimes act in combination. These processes include physical (sedimentation, filtration, adsorption), chemical (UV radiation, oxidation), and biological (predation, natural die-off) processes, and it can be quite challenging to specify the main factors that are responsible for the removal of pathogens [
13]. The focal point regarding pathogenic microorganisms will include viruses, bacteria, and protozoa with
Escherichia coli, total and fecal coliforms, and fecal streptococci drawing the most attention since they are the most common indicators.
This paper aims to explore relevant studies regarding pathogen removal from constructed wetlands and their respective characteristics. To do that, a systematic literature review will be performed to create a comprehensive dataset that provides a complete overview of CWs’ performance under various conditions and highlights potential knowledge gaps and opportunities for meta-analysis.
2. Materials and Methods
2.1. Systematic Literature Review
The systematic review of the literature was performed, adopting the Preferred Reporting Items for Systematic Reviews and Meta-Analyses (PRISMA) guidelines [
14]. The preferred search engines “Scopus’’ and “PubMed’’ were used. The combination of keywords, as well as the results from the databases regarding the total number of papers, are shown in
Appendix A.
2.1.1. Inclusion Criteria
The primary objective of this systematic literature review was to record of case studies, not scientific reviews, as well as the extraction of results associated with the removal of pathogens, such as viruses, bacteria, and protozoa. Furthermore, the inclusive criteria were about the optimal availability and quality of the technical features such as:
The dimensions of the constructed wetland;
The Hydraulic Loading Rate (HLR);
The Hydraulic Retention Time (HRT);
The porosity (n) of the media grains;
A detailed description of CWs.
From the above criteria, the included studies contained at least the hydraulic characteristics. Additionally, it was preferred to include studies that described at least part of the experimental conditions (if not all), such as:
Temperature (T);
The type of influent wastewater;
The method of enumeration, such as Colony Forming Units (CFU/100 ml) and Most Probable Number (MPN);
Physicochemical parameters like:
- ○
Biological Oxygen Demand (BOD);
- ○
Chemical Oxygen Demand (COD);
- ○
Total Suspended Solids (TSS).
Figure 1 demonstrates the search process of the systematic review, the reasons for excluding papers, as well as the number of case studies. After two series of screening, a total of 48 case studies qualified for both qualitative and quantitative analyses.
2.1.2. Spatial Distribution of Case Studies
After the selection of the case studies, a spatial distribution map was created to show the dispersion and the number of studies on a national level throughout the world.
Figure 2 shows that the selected studies came from various regions of the world with different temperature/climatic zones (More information about the climatic zones can be found in:
https://www.arcgis.com/home/item.html?id=5826b14592ab4ebc99574919165bd860), which strengthens the validity of the database as it was expected that there would be variability on the performance of different CW types between different climatic zones. A relationship between temperature/climatic zones and log removal was examined by looking at potential correlations.
2.2. Data Extraction Process
During the extraction process, a classification between the case studies under consideration was made to ease the process of data extraction. The classes “Include 1” and “Include 2” were created, with the numbering system indicating the degree of difficulty in extracting data as well as the quantity of descriptive information of case studies. The second class was decided to be incorporated only after realizing that the first class did not provide enough information. Moreover, in cases where important information was missing, it was decided to calculate these using many times default values. Briefly, in studies where the HRT value was missing, it was decided that for the calculation of this value, the addition of porosity had to be included to the numerator to obtain a more representative value for the retention time. In times were the porosity value was not indicated, a default value of 0.35 for sand and 0.4 for clay was used [
15].
2.3. Creation of Dataset and Classification of Pathogens
After the data extraction was completed, a comprehensive dataset with all the necessary values was created, as can be seen in
Appendix B. This dataset includes information about HRT, HLR, type of CW, temperature, and concentration of influent (
Cin) and effluent (
Cout), for various pathogens. This information helped to create a complete, up-to-date overview of the performance of constructed wetlands.
The next step was the classification of pathogenic microorganisms into three main categories: gram-negative bacteria (GNB), viruses, and protozoan parasites (
Table 1). As can be seen, the systematic literature review identified various microorganisms, both indicators and pathogens for each category, but not on the same frequency. Briefly, although
E. coli (which is a common indicator) was found in 33 of the 48 papers, other indicators such as fecal coliforms, total coliforms, and fecal streptococci did not have the same frequency (23, 25, and 9, respectively). Furthermore, from the viruses’ category, coliphages were found in only 5 papers in total; whereas, from the protozoan parasites category, Giardia had considerably less information, with only 3 papers. Therefore, the grouping between indicators and pathogens for every category was necessary, to have a better understanding of their removal from CWs, since it was expected to observe the largest differences in removal between categories and rather smaller differences within categories.
Figure 3 demonstrates the range and average log removal for each category between indicators and pathogens. It can be seen (for GNB and protozoa) that indicators and pathogenic microorganisms have relatively similar levels of removal, which increases the reliability of the decision to group indicators with pathogens. For viruses, the indicators appear to be removed to a lesser extent, therefore they should be regarded as conservative indicators.
2.4. Preliminary Exploration between Parameters
The goal of this preliminary exploration was to identify potential patterns between parameters by plotting them to each other regarding either different types of wetlands or different pathogen categories. Regarding parameters, the
Cin,
Cout, HRT, and HLR were assessed, since those were the only parameters that were consistently reported in the literature review. The reason behind this preliminary plotting was the fact that multiple studies have been conducted for the removal of pollutants and pathogens from CWs where they perform regression analysis and try to determine if there are significant relationships between the aforementioned parameters [
16,
17,
18,
19,
20,
21,
22]. These studies found that there seems to be a linear/nonlinear relationship that is expressed through an equation that uses the
Cout as a function of
Cin and/or HRT, HLR. Having the above information in mind, a simplified expression of these relationships was performed.
3. Results
3.1. Log Removal and Temperature/Climatic Zones
Figure 4 demonstrates the average log removal for case studies per country and the respective temperature/climatic zones throughout the world. Although there seems to be a trend in which higher removal values can be found in hot temperature zones, and rather low removal values can be found in cold and cool zones, a clear correlation was not found, since there is a significant variation within different zones. Additionally, the log removal values are averaged per country and in many cases, there is only one case study per country.
3.2. Overall Performance of CW Types
Figure 5 shows that the log removal for the three types of CWs ranges between 1 and 6 log, whereas the average value ranges between 1 and 2 log.
Table 2 demonstrates the overall performance of CWs. The majority of the papers in the systematic literature review used SSHFCW for the removal of pathogens, whereas all types seem to have a potential of pathogen removal to a certain level. Briefly, the FWS types have log removal values ranging from 0.07 to 5.3 log, the SSHFCW from 0.01 to 5.68 log, and finally the VFCW type from 0.35 to 6.08 log.
Moreover, by plotting the influent versus the effluent concentrations of pathogens, there seems to be a positive correlation and potentially a non-linear relationship between the two parameters (the example of FWS is shown in
Figure 6 whilst the rest can be found in
Appendix C). That means that other parameters (HRL and/or HRT) also influence the removal of pathogens.
Therefore, plotting log removal values [LRV =
log(
Cin/
Cout)] vs. HLR and HRT gives a first estimate of the significance of those parameters (a SSHFCW plot will be used as an example, whilst the rest can be found in
Appendix D).
Figure 7 and
Figure 8 demonstrate the relationship between log removal and HLR/HRT for the three pathogen categories in a SSHFCW. The observed variation can be explained by the different applications (full-scale vs. pilot-scale)—pilot-scale applications have different dynamics (lower loading rates) and experimental conditions (dimensions, vegetation, etc.) which lead to a huge variation regarding removal—the complexity and variability in performance for the system itself, but also due to the different technical features/experimental conditions of each study (porosity, dimensions of CW, type of influent wastewater). Regardless, important information that can be extracted from these plots, namely the positive correlation between the removal of pathogens and HLR/HRT for all three pathogen categories (the positive correlation could not be observed in all types of wetlands, as can be seen in
Appendix C) indicating that both hydraulic characteristics play a significant role in the removal of pathogens.
Additionally,
Figure 9 demonstrates the Cumulative Distribution Function (CDF) of the different types of CWs regarding their removal. It can be observed that all three wetlands show an adequate removal since 50% of the distribution has a removal higher than 1.5 log. The FWS and SSHFCW have an identical distribution where 75% of them have log removal between 0–2 log and the rest are between 2–4 log. The VFCW shows a slightly different profile since 75% of the distribution is between 0–4 log and the rest between 4–6 log, indicating the higher capacity in removal compared to the other two systems.
3.3. Removal of Pathogen Categories
Table 3 shows that the category of GNB can be found in the majority of the papers collected (47 studies) while the protozoan parasites and viruses were found in 8 and 7 studies, respectively. This comes as no surprise since the specific category includes the most common indicators and index pathogens such as
E. Coli, total coliforms, fecal coliforms, campylobacter, and salmonella. Furthermore, as expected, the same category was responsible for the minimum and maximum log removal values overall when compared with the viruses and protozoan parasites categories.
Table 4 gives an overview of the three pathogen categories regarding their removal per CW type.
Furthermore,
Table 3 depicts the overall performance of the GNB, while the other two categories can be found in
Appendix D. These tables include information regarding the number of pilot and full-scale applications, as well as physicochemical characteristics, such as air and water temperature, and HRT and HLR range. In addition, there are values of COD, BOD, and TSS removal percentage that can be indicators of pollutant removal for each type of CW and pathogen category. What can be extracted from these tables is the difference and the small number of data points between types of CWs regarding their reported physicochemical characteristics, which makes it difficult to draw conclusions and compare the different types of wetlands. Only the HRT and HLR were consistently reported.
Figure 10 shows that gram-negative bacteria show great variability in their removal (0.01–6.08 log) compared to viruses and protozoan parasites categories, where the ranges are between 0.02–3.62 log and 0.18–3.63 log, respectively. Again, it can be seen that the average log removal values range between 1 and 2 log for the three categories in all of the CW types except the viruses category in VFCW, where the average log removal is less than 1 log. Furthermore,
Figure 11 illustrates the average log removal of the most representative indicators and index pathogens as recorded during the systematic review. The group of coliforms is that with the greatest variability. While the variability can be explained due to the different number of data points, another possible explanation is again the fact that both pilot and full-scale applications are included in the boxplots. The outliers in many of the species strengthen this assumption. Additionally, there is great variability of pathogen log removal within their categories. This is an important observation since it was expected for the different pathogen categories to formulate clusters regarding log removal.
Finally, the CDF (
Figure 12) of the different pathogen categories regarding their removal indicates that 75 % of both the protozoan parasites and viruses categories have a removal lower or equal to 2 log, while their peak lies just before 4 log. The sharp increase in log removal (straight lines) between 2 log onwards can be attributed to the low density of data points in these categories. In contrast, the gram-negative bacteria category exhibits a smooth curve along the distribution where 60% of the observed data points have a removal lower or equal to 2 log, while the remaining 40% lies between 2 and 6 log. Regarding the most representative indicators,
Figure 13 shows that all four indicators follow a rather smooth curve along the distribution and have an adequate removal since 50% of all indicators show a removal higher than 1.5 log.
4. Discussion
This study brings all current quantitative data together in a dataset, giving any end-user access to the overall performance of CW types and their respective pathogen removal efficiency. More importantly, the systematic review included case studies from all over the world; therefore, the collected information can be considered representative. Pilot-scale applications have been reported most often, mainly because the majority of them were experimental case studies with the objective of investigating the removal efficiencies of pollutants and pathogens. Full-scale applications, although used in many cases, are not reported in scientific papers to the same extent. Furthermore, the initial attempt to try to identify trends and possible correlations between log removal and temperature/climatic zones was unsuccessful, since no robust conclusions could be drawn from the graph.
The average pathogen removal of all three types of CWs was between 1 and 2 log, indicating that CWs cannot be a reliable option for pathogen removal as a standalone wastewater treatment method, although some case studies showed potential for further research since they achieved a removal as high as 6 log. However, they can be a credible choice as a wastewater polishing step when they are combined with conventional wastewater treatment systems. Regarding the removal of the three pathogen categories,
Table 4 shows that the gram-negative bacteria category has the highest log removal in all types of CW. On the other hand, the same group shows great variability which makes it difficult to draw tangible conclusions about the ease of removal of this category. This can best be seen in
Figure 13, where the variability of all categories is shown using boxplots. Protozoan parasites show less variability in FWS, whereas the viruses’ category is the one with the smallest range in SSHFCW. Conclusions could not be drawn for the last two categories in VFCW types, since their number of data points was small. In addition, the huge difference in variability between the three categories can be attributed to the huge database of the gram-negative bacteria category since -to some extent- it was expected to see scattered removal values. On the other hand, although the other categories show less variability and it is easier to draw conclusions about their removal, their databases are quite small, which should make any decision-maker skeptical about the reliability of the results. The CDFs of different types of CWs and different pathogen categories simply provided an initial mapping of the situation (in terms of performance and removal capacity) according to the literature review and can be used as a reference point.
Regarding limitations, one of the major difficulties encountered in this literature review was the lack of important and relevant data from the studies that were included in the dataset. Therefore, a need for more descriptive information from papers is considered imperative, especially for studies that are directly related to constructed wetlands and pathogen removal. Additionally, a lot of studies did not provide extractable information, which meant that a lot of assumptions had to be made (e.g., the default value of porosity, the calculation of missing parameters using default values). Therefore, it is recommended that the scientific community should focus on adequate reporting of extractable data and information to better facilitate future research.
Finally, a relationship was identified by plotting the influent versus effluent concentration as well as the log removal versus HLR/HRT between different types of CWs. Various patterns were observed which give room for further investigation in these parameters. Therefore, a potential meta-analysis of this database using statistical analysis can provide additional and insightful information on the significance of Cin, HLR, and HRT on pathogen removal. If enough data can be provided for all types of CWs and pathogen categories, then a model that can predict the removal of pathogens under the influence of specific parameters can be created. This can potentially help the scientific community gain a better insight into the removal capacity of these systems.
5. Conclusions
The purpose of this literature review was to shed more light on the performance of CWs regarding pathogen removal. That was achieved, as the outcome of the review includes a comprehensive database that covers a wide range of information about constructed wetlands and log removal values from specific pathogen categories. Special attention must be paid to better reporting of extractable information to be able to draw tangible conclusions regarding different pathogen categories and their respective removal from CWs and improve the current dataset. Moreover, the plotting of different parameters indicated potential relationships that can lead to the creation of a predictive model if a meta-analysis of this dataset is performed. Overall, the outcome does provide an efficient approach to the scientific community by taking a step towards a better understanding of these ‘’black boxes’’ and pointing out where future research needs to focus to fine-tune and quantify the factors that influence the performance of constructed wetlands.