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  3. Deep Learning-based Modeling for Preclinical Drug Safety Assessment.
 

Deep Learning-based Modeling for Preclinical Drug Safety Assessment.

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BORIS DOI
10.48350/199531
Publisher DOI
10.1101/2024.07.20.604430
PubMed ID
39091793
Description
In drug development, assessing the toxicity of candidate compounds is crucial for successfully transitioning from preclinical research to early-stage clinical trials. Drug safety is typically assessed using animal models with a manual histopathological examination of tissue sections to characterize the dose-response relationship of the compound - a time-intensive process prone to inter-observer variability and predominantly involving tedious review of cases without abnormalities. Artificial intelligence (AI) methods in pathology hold promise to accelerate this assessment and enhance reproducibility and objectivity. Here, we introduce TRACE, a model designed for toxicologic liver histopathology assessment capable of tackling a range of diagnostic tasks across multiple scales, including situations where labeled data is limited. TRACE was trained on 15 million histopathology images extracted from 46,734 digitized tissue sections from 157 preclinical studies conducted on Rattus norvegicus. We show that TRACE can perform various downstream toxicology tasks spanning histopathological response assessment, lesion severity scoring, morphological retrieval, and automatic dose-response characterization. In an independent reader study, TRACE was evaluated alongside ten board-certified veterinary pathologists and achieved higher concordance with the consensus opinion than the average of the pathologists. Our study represents a substantial leap over existing computational models in toxicology by offering the first framework for accelerating and automating toxicological pathology assessment, promoting significant progress with faster, more consistent, and reliable diagnostic processes.
Date of Publication
2024-07-23
Publication Type
Working Paper
Subject(s)
600 Technology > 610 Medicine & health
600 Technology > 630 Agriculture
Language(s)
en
Contributor(s)
Jaume, Guillaume
De Brot, Simone Danielle
Institut für Tierpathologie (ITPA) - Lehre & Diagnostik
Institut für Tierpathologie (ITPA) - Labor Krebstherapieresistenz
Song, Andrew H
Williamson, Drew F K
Oldenburg, Lukas
Zhang, Andrew
Chen, Richard J
Asin, Javier
Blatter, Sohvi Tuulikki
Institut für Tierpathologie (ITPA) - Labor Krebstherapieresistenz
Institut für Tierpathologie (ITPA) - Lehre & Diagnostik
Institut für Tierpathologie (ITPA)
Dettwiler, Martina
Goepfert, Christine
Grau-Roma, Llorenç
Soto, Sara
Keller, Stefan M
Rottenberg, Svenorcid-logo
Institut für Tierpathologie (ITPA) - Labor Krebstherapieresistenz
Department for BioMedical Research (DBMR)
Institut für Tierpathologie (ITPA)
Del-Pozo, Jorge
Pettit, Rowland
Le, Long Phi
Mahmood, Faisal
Additional Credits
Institut für Tierpathologie (ITPA) - Labor Krebstherapieresistenz
Institut für Tierpathologie (ITPA) - Lehre & Diagnostik
Series
bioRxiv : the preprint server for biology
Publisher
Cold Spring Harbor Laboratory
ISSN
2692-8205
Access(Rights)
open.access
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