Literature DB >> 35058173

Deep Learning Image Analysis of High-Throughput Toxicology Assay Images.

Arpit Tandon1, Brian Howard1, Sreenivasa Ramaiahgari2, Adyasha Maharana1, Stephen Ferguson2, Ruchir Shah3, B Alex Merrick2.   

Abstract

High-throughput chemical screening approaches often employ microscopy to capture photomicrographs from multi-well cell culture plates, generating thousands of images that require time-consuming human analysis. To automate this subjective and time-consuming manual process, we have developed a method that uses deep learning to automatically classify digital assay images. We have trained a convolutional neural network (CNN) to perform binary and multi-class classification. The binary classifier binned assay images into healthy (comparable to untreated controls) and altered (not comparable to untreated-control) classes with >98% accuracy; the multi-class classifier assigned "Healthy," "Intermediate" and "Altered" labels to assay images with >95% accuracy. Our dataset comprised high-resolution assay images from primary human hepatocytes and undifferentiated (proliferating) and differentiated 2D cultures of HepaRG cells. In this study we have focused on testing and fine-tuning various CNN architectures, including ResNet 34, 50 and 101. To visualize regions in the images that the CNN model used for classification, we employed Class Activation Maps (CAM). This allowed us to better understand the inner workings of the neural network and led to additional optimizations of the algorithm. The results indicate a strong correspondence between dosage and classifier-predicted scores, suggesting that these scores might be useful in further characterizing benchmark dose. Together, these results clearly demonstrate that deep-learning based automated image classification of cell morphology changes upon chemical-induced stress can yield highly accurate and reproducible assessments of cytotoxicity across a variety of cell types.
Copyright © 2021 The Authors. Published by Elsevier Inc. All rights reserved.

Entities:  

Keywords:  CNN; Deep learning; Image analysis; Toxicology

Mesh:

Year:  2021        PMID: 35058173      PMCID: PMC8955414          DOI: 10.1016/j.slasd.2021.10.014

Source DB:  PubMed          Journal:  SLAS Discov        ISSN: 2472-5552            Impact factor:   2.918


  9 in total

1.  From the Cover: Three-Dimensional (3D) HepaRG Spheroid Model With Physiologically Relevant Xenobiotic Metabolism Competence and Hepatocyte Functionality for Liver Toxicity Screening.

Authors:  Sreenivasa C Ramaiahgari; Suramya Waidyanatha; Darlene Dixon; Michael J DeVito; Richard S Paules; Stephen S Ferguson
Journal:  Toxicol Sci       Date:  2017-09-01       Impact factor: 4.849

2.  Squeeze-and-Excitation Networks.

Authors:  Jie Hu; Li Shen; Samuel Albanie; Gang Sun; Enhua Wu
Journal:  IEEE Trans Pattern Anal Mach Intell       Date:  2019-04-29       Impact factor: 6.226

3.  Deep Convolutional Neural Networks for Image Classification: A Comprehensive Review.

Authors:  Waseem Rawat; Zenghui Wang
Journal:  Neural Comput       Date:  2017-06-09       Impact factor: 2.026

4.  Regulation of cell morphology and cytochrome P450 expression in human hepatocytes by extracellular matrix and cell-cell interactions.

Authors:  G A Hamilton; S L Jolley; D Gilbert; D J Coon; S Barros; E L LeCluyse
Journal:  Cell Tissue Res       Date:  2001-10       Impact factor: 5.249

5.  Intersection of toxicogenomics and high throughput screening in the Tox21 program: an NIEHS perspective.

Authors:  B Alex Merrick; Richard S Paules; Raymond R Tice
Journal:  Int J Biotechnol       Date:  2015

Review 6.  Deep Learning and Its Applications in Biomedicine.

Authors:  Chensi Cao; Feng Liu; Hai Tan; Deshou Song; Wenjie Shu; Weizhong Li; Yiming Zhou; Xiaochen Bo; Zhi Xie
Journal:  Genomics Proteomics Bioinformatics       Date:  2018-03-06       Impact factor: 7.691

7.  Tox_(R)CNN: Deep learning-based nuclei profiling tool for drug toxicity screening.

Authors:  Daniel Jimenez-Carretero; Vahid Abrishami; Laura Fernández-de-Manuel; Irene Palacios; Antonio Quílez-Álvarez; Alberto Díez-Sánchez; Miguel A Del Pozo; María C Montoya
Journal:  PLoS Comput Biol       Date:  2018-11-30       Impact factor: 4.475

8.  Deep Learning Neural Networks Highly Predict Very Early Onset of Pluripotent Stem Cell Differentiation.

Authors:  Ariel Waisman; Alejandro La Greca; Alan M Möbbs; María Agustina Scarafía; Natalia L Santín Velazque; Gabriel Neiman; Lucía N Moro; Carlos Luzzani; Gustavo E Sevlever; Alejandra S Guberman; Santiago G Miriuka
Journal:  Stem Cell Reports       Date:  2019-03-14       Impact factor: 7.765

9.  The Power of Resolution: Contextualized Understanding of Biological Responses to Liver Injury Chemicals Using High-throughput Transcriptomics and Benchmark Concentration Modeling.

Authors:  Sreenivasa C Ramaiahgari; Scott S Auerbach; Trey O Saddler; Julie R Rice; Paul E Dunlap; Nisha S Sipes; Michael J DeVito; Ruchir R Shah; Pierre R Bushel; Bruce A Merrick; Richard S Paules; Stephen S Ferguson
Journal:  Toxicol Sci       Date:  2019-06-01       Impact factor: 4.849

  9 in total

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