Machine Learning for Ionic Liquid Toxicity Prediction

In addition to proper physicochemical properties, low toxicity is also desirable when seeking suitable ionic liquids (ILs) for specific applications. In this context, machine learning (ML) models were developed to predict the IL toxicity in leukemia rat cell line (IPC-81) based on an extended experi...

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Main Authors: Zihao Wang, Zhen Song, Teng Zhou
Format: Article
Language:English
Published: MDPI AG 2021-12-01
Series:Processes
Subjects:
Online Access:https://www.mdpi.com/2227-9717/9/1/65
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spelling doaj-6252113756154cc1ab6abb3358e24f592020-12-31T00:01:19ZengMDPI AGProcesses2227-97172021-12-019656510.3390/pr9010065Machine Learning for Ionic Liquid Toxicity PredictionZihao Wang0Zhen Song1Teng Zhou2Process Systems Engineering, Max Planck Institute for Dynamics of Complex Technical Systems, Sandtorstr. 1, D-39106 Magdeburg, GermanyProcess Systems Engineering, Otto-von-Guericke University Magdeburg, Universitätsplatz 2, D-39106 Magdeburg, GermanyProcess Systems Engineering, Max Planck Institute for Dynamics of Complex Technical Systems, Sandtorstr. 1, D-39106 Magdeburg, GermanyIn addition to proper physicochemical properties, low toxicity is also desirable when seeking suitable ionic liquids (ILs) for specific applications. In this context, machine learning (ML) models were developed to predict the IL toxicity in leukemia rat cell line (IPC-81) based on an extended experimental dataset. Following a systematic procedure including framework construction, hyper-parameter optimization, model training, and evaluation, the feedforward neural network (FNN) and support vector machine (SVM) algorithms were adopted to predict the toxicity of ILs directly from their molecular structures. Based on the ML structures optimized by the five-fold cross validation, two ML models were established and evaluated using IL structural descriptors as inputs. It was observed that both models exhibited high predictive accuracy, with the SVM model observed to be slightly better than the FNN model. For the SVM model, the determination coefficients were 0.9289 and 0.9202 for the training and test sets, respectively. The satisfactory predictive performance and generalization ability make our models useful for the computer-aided molecular design (CAMD) of environmentally friendly ILs.https://www.mdpi.com/2227-9717/9/1/65ionic liquidtoxicitymachine learningneural networksupport vector machine
collection DOAJ
language English
format Article
sources DOAJ
author Zihao Wang
Zhen Song
Teng Zhou
spellingShingle Zihao Wang
Zhen Song
Teng Zhou
Machine Learning for Ionic Liquid Toxicity Prediction
Processes
ionic liquid
toxicity
machine learning
neural network
support vector machine
author_facet Zihao Wang
Zhen Song
Teng Zhou
author_sort Zihao Wang
title Machine Learning for Ionic Liquid Toxicity Prediction
title_short Machine Learning for Ionic Liquid Toxicity Prediction
title_full Machine Learning for Ionic Liquid Toxicity Prediction
title_fullStr Machine Learning for Ionic Liquid Toxicity Prediction
title_full_unstemmed Machine Learning for Ionic Liquid Toxicity Prediction
title_sort machine learning for ionic liquid toxicity prediction
publisher MDPI AG
series Processes
issn 2227-9717
publishDate 2021-12-01
description In addition to proper physicochemical properties, low toxicity is also desirable when seeking suitable ionic liquids (ILs) for specific applications. In this context, machine learning (ML) models were developed to predict the IL toxicity in leukemia rat cell line (IPC-81) based on an extended experimental dataset. Following a systematic procedure including framework construction, hyper-parameter optimization, model training, and evaluation, the feedforward neural network (FNN) and support vector machine (SVM) algorithms were adopted to predict the toxicity of ILs directly from their molecular structures. Based on the ML structures optimized by the five-fold cross validation, two ML models were established and evaluated using IL structural descriptors as inputs. It was observed that both models exhibited high predictive accuracy, with the SVM model observed to be slightly better than the FNN model. For the SVM model, the determination coefficients were 0.9289 and 0.9202 for the training and test sets, respectively. The satisfactory predictive performance and generalization ability make our models useful for the computer-aided molecular design (CAMD) of environmentally friendly ILs.
topic ionic liquid
toxicity
machine learning
neural network
support vector machine
url https://www.mdpi.com/2227-9717/9/1/65
work_keys_str_mv AT zihaowang machinelearningforionicliquidtoxicityprediction
AT zhensong machinelearningforionicliquidtoxicityprediction
AT tengzhou machinelearningforionicliquidtoxicityprediction
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