Machine learning and explainable artificial intelligence for the prevention of waterborne cryptosporidiosis and giardiosis

被引:0
|
作者
Ligda, Panagiota [1 ]
Mittas, Nikolaos [2 ]
Kyzas, George Z. [2 ]
Claerebout, Edwin [3 ]
Sotiraki, Smaragda [1 ]
机构
[1] Hellen Agr Org, Vet Res Inst, Lab Parasitol, DIMITRA, Thessaloniki 57001, Greece
[2] Democritus Univ Thrace, Fac Sci, Sch Chem, Hephaestus Lab, Kavala 65404, Greece
[3] Univ Ghent, Fac Vet Med, Lab Parasitol, Salisburylaan 133, B-9820 Merelbeke, Belgium
关键词
Machine learning; Explainable artificial intelligence; Cryptosporium; Giardia; Monitoring system; Waterborne outbreak; PATHOGENIC BACTERIA; PARASITES; INDICATORS; OOCYSTS; ASSOCIATIONS; MECHANISMS; PREDICTION; OUTBREAKS; RECOVERY; CLIMATE;
D O I
10.1016/j.watres.2024.122110
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Cryptosporidium and Giardia are important parasitic protozoa due to their zoonotic potential and impact on human health, and have often caused waterborne outbreaks of disease. Detection of (oo)cysts in water matrices is challenging and extremely costly, thus only few countries have legislated for regular monitoring of drinking water for their presence. Several attempts have been made trying to investigate the association between the presence of such (oo)cysts in waters with other biotic or abiotic factors, with inconclusive findings. In this regard, the aim of this study was the development of an holistic approach leveraging Machine Learning (ML) and eXplainable Artificial Intelligence (XAI) techniques, in order to provide empirical evidence related to the presence and prediction of Cryptosporidium oocysts and Giardia cysts in water samples. To meet this objective, we initially modelled the complex relationship between Cryptosporidium and Giardia (oo)cysts and a set of parasitological, microbiological, physicochemical and meteorological parameters via a model-agnostic meta-learner algorithm that provides flexibility regarding the selection of the ML model executing the fitting task. Based on this generic approach, a set of four well-known ML candidates were, empirically, evaluated in terms of their predictive capabilities. Then, the best-performed algorithms, were further examined through XAI techniques for gaining meaningful insights related to the explainability and interpretability of the derived solutions. The findings reveal that the Random Forest achieves the highest prediction performance when the objective is the prediction of both contamination and contamination intensity with Cryptosporidium oocysts in a given water sample, with meteorological/physicochemical and microbiological markers being informative, respectively. For the prediction of contamination with Giardia, the eXtreme Gradient Boosting with physicochemical parameters was the most efficient algorithm, while, the Support Vector Regression that takes into consideration both microbiological and meteorological markers was more efficient for evaluating the contamination intensity with cysts. The results of the study designate that the adoption of ML and XAI approaches can be considered as a valuable tool for unveiling the complicated correlation of the presence and contamination intensity with these zoonotic parasites that could constitute, in turn, a basis for the development of monitoring platforms and early warning systems for the prevention of waterborne disease outbreaks.
引用
收藏
页数:13
相关论文
共 50 条
  • [1] Explainable Artificial Intelligence and Machine Learning
    Raunak, M. S.
    Kuhn, Rick
    [J]. COMPUTER, 2021, 54 (10) : 25 - 27
  • [2] Explainable artificial intelligence and machine learning: A reality rooted perspective
    Emmert-Streib, Frank
    Yli-Harja, Olli
    Dehmer, Matthias
    [J]. WILEY INTERDISCIPLINARY REVIEWS-DATA MINING AND KNOWLEDGE DISCOVERY, 2020, 10 (06)
  • [3] Advances in Machine Learning and Explainable Artificial Intelligence for Depression Prediction
    Byeon, Haewon
    [J]. INTERNATIONAL JOURNAL OF ADVANCED COMPUTER SCIENCE AND APPLICATIONS, 2023, 14 (06) : 520 - 526
  • [4] Explainable artificial intelligence and machine learning algorithms for classification of thyroid disease
    Kumari, Priyanka
    Kaur, Baljinder
    Rakhra, Manik
    Deka, Aniruddha
    Byeon, Haewon
    Asenso, Evans
    Rawat, Anil Kumar
    [J]. DISCOVER APPLIED SCIENCES, 2024, 6 (07)
  • [5] Explainable artificial intelligence and interpretable machine learning for agricultural data analysis
    Ryo, Masahiro
    [J]. ARTIFICIAL INTELLIGENCE IN AGRICULTURE, 2022, 6 : 257 - 265
  • [6] An interpretable schizophrenia diagnosis framework using machine learning and explainable artificial intelligence
    Shivaprasad, Samhita
    Chadaga, Krishnaraj
    Dias, Cifha Crecil
    Sampathila, Niranjana
    Prabhu, Srikanth
    [J]. SYSTEMS SCIENCE & CONTROL ENGINEERING, 2024, 12 (01)
  • [7] Interpretability and Transparency of Machine Learning in File Fragment Analysis with Explainable Artificial Intelligence
    Jinad, Razaq
    Islam, A. B. M.
    Shashidhar, Narasimha
    [J]. ELECTRONICS, 2024, 13 (13)
  • [8] Application of artificial intelligence and machine learning for HIV prevention interventions
    Xiang, Yang
    Du, Jingcheng
    Fujimoto, Kayo
    Li, Fang
    Schneider, John
    Tao, Cui
    [J]. LANCET HIV, 2022, 9 (01): : E54 - E62
  • [9] Interactive Collaborative Learning with Explainable Artificial Intelligence
    Arnold, Oksana
    Golchert, Sebastian
    Rennert, Michel
    Jantke, Klaus P.
    [J]. LEARNING IN THE AGE OF DIGITAL AND GREEN TRANSITION, ICL2022, VOL 1, 2023, 633 : 13 - 24
  • [10] Machine Learning and Explainable Artificial Intelligence Using Counterfactual Explanations for Evaluating Posture Parameters
    Dindorf, Carlo
    Ludwig, Oliver
    Simon, Steven
    Becker, Stephan
    Froehlich, Michael
    [J]. BIOENGINEERING-BASEL, 2023, 10 (05):