Machine Learning Models for Identification and Prediction of Toxic Organic Compounds Using Daphnia magna Transcriptomic Profiles

被引:7
|
作者
Choi, Tae-June [1 ]
An, Hyung-Eun [1 ]
Kim, Chang-Bae [1 ]
机构
[1] Sangmyung Univ, Dept Biotechnol, Seoul 03016, South Korea
来源
LIFE-BASEL | 2022年 / 12卷 / 09期
关键词
environmental monitoring; aquatic ecosystem; toxic organic compounds; Daphnia magna; transcriptomic profiles; machine learning; random forest; CLASSIFICATION;
D O I
10.3390/life12091443
中图分类号
Q [生物科学];
学科分类号
07 ; 0710 ; 09 ;
摘要
A wide range of environmental factors heavily impact aquatic ecosystems, in turn, affecting human health. Toxic organic compounds resulting from anthropogenic activity are a source of pollution in aquatic ecosystems. To evaluate these contaminants, current approaches mainly rely on acute and chronic toxicity tests, but cannot provide explicit insights into the causes of toxicity. As an alternative, genome-wide gene expression systems allow the identification of contaminants causing toxicity by monitoring the organisms' response to toxic substances. In this study, we selected 22 toxic organic compounds, classified as pesticides, herbicides, or industrial chemicals, that induce environmental problems in aquatic ecosystems and affect human-health. To identify toxic organic compounds using gene expression data from Daphnia magna, we evaluated the performance of three machine learning based feature-ranking algorithms (Learning Vector Quantization, Random Forest, and Support Vector Machines with a Linear kernel), and nine classifiers (Linear Discriminant Analysis, Classification And Regression Trees, K-nearest neighbors, Support Vector Machines with a Linear kernel, Random Forest, Boosted C5.0, Gradient Boosting Machine, eXtreme Gradient Boosting with tree, and eXtreme Gradient Boosting with DART booster). Our analysis revealed that a combination of feature selection based on feature-ranking and a random forest classification algorithm had the best model performance, with an accuracy of 95.7%. This is a preliminary study to establish a model for the monitoring of aquatic toxic substances by machine learning. This model could be an effective tool to manage contaminants and toxic organic compounds in aquatic systems.
引用
收藏
页数:10
相关论文
共 50 条
  • [1] QSAR Classification Models of Acute Toxicity of Organic Compounds with Respect to Daphnia magna
    Grigor'ev, V. Yu.
    Razdol'skii, A. N.
    Zagrebin, A. O.
    Tonkopii, V. D.
    Raevskii, O. A.
    PHARMACEUTICAL CHEMISTRY JOURNAL, 2014, 48 (04) : 242 - 245
  • [2] QSAR Classification Models of Acute Toxicity of Organic Compounds with Respect to Daphnia magna
    V. Yu. Grigor’ev
    A. N. Razdol’skii
    A. O. Zagrebin
    V. D. Tonkopii
    O. A. Raevskii
    Pharmaceutical Chemistry Journal, 2014, 48 : 242 - 245
  • [3] Exploring the potential of in silico machine learning tools for the prediction of acute Daphnia magna nanotoxicity
    Balraadjsing, Surendra
    Peijnenburg, Willie J. G. M.
    Vijver, Martina G.
    CHEMOSPHERE, 2022, 307
  • [4] Machine Learning Identification of Organic Compounds Using Visible Light
    Bikku, Thulasi
    Fritz, Ruben A.
    Colon, Yamil J.
    Herrera, Felipe
    JOURNAL OF PHYSICAL CHEMISTRY A, 2023, 127 (10): : 2407 - 2414
  • [5] Toxic action of organic compounds and heavy metals on Epischura Baicalensis and Daphnia Magna in the presence of fodder organisms
    Stom, D.I.
    Geel, T.A.
    2001, Begell House Inc. (37)
  • [6] Identification of Chemicals Based on Locomotor Tracks of Daphnia magna Using Deep Learning
    Cheng, Shiyang
    Yuan, Siliang
    Wu, Xinyue
    Lei, Teng
    Ji, Jiali
    Yin, Yuhan
    Liu, Yunqi
    Liu, Chunsheng
    Zhang, Yongkang
    Zhu, Ya
    ENVIRONMENTAL SCIENCE & TECHNOLOGY LETTERS, 2023, 10 (11) : 998 - 1003
  • [7] Read-Across Prediction of the Acute Toxicity of Organic Compounds toward the Water Flea Daphnia magna
    Kuehne, Ralph
    Ebert, Ralf-Uwe
    von der Ohe, Peter C.
    Ulrich, Nadin
    Brack, Werner
    Schueuermann, Gerrit
    MOLECULAR INFORMATICS, 2013, 32 (01) : 108 - 120
  • [8] QSAR approach to enhance the prediction coverage and performance of acute toxicity to Daphnia magna with diverse organic compounds
    Cha, Ji Young
    Shin, Seongeun
    Kim, Kwang-Yon
    No, Kyoung Tai
    TOXICOLOGY LETTERS, 2014, 229 : S161 - S161
  • [9] Integrating the lethal and sublethal effects of toxic compounds into the population dynamics of Daphnia magna:: A combination of the DEBtox and matrix population models
    Billoir, Elise
    Pery, Alexandre R. R.
    Charles, Sandrine
    ECOLOGICAL MODELLING, 2007, 203 (3-4) : 204 - 214
  • [10] QSAR Models for Toxicity of Organic Substances to Daphnia magna Built up by Using the CORAL Freeware
    Toropova, Alla P.
    Toropov, Andrey A.
    Benfenati, Emilio
    Gini, Giuseppina
    CHEMICAL BIOLOGY & DRUG DESIGN, 2012, 79 (03) : 332 - 338