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Deep Morphology Learning Enhances Ex Vivo Drug Profiling-Based Precision Medicine

Drug testing in patient biopsy-derived cells can identify potent treatments for patients suffering from relapsed or refractory hematologic cancers. Here we investigate the use of weakly supervised deep learning on cell morphologies (DML) to complement diagnostic marker-based identification of malign...

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Autores principales: Heinemann, Tim, Kornauth, Christoph, Severin, Yannik, Vladimer, Gregory I., Pemovska, Tea, Hadzijusufovic, Emir, Agis, Hermine, Krauth, Maria-Theresa, Sperr, Wolfgang R., Valent, Peter, Jäger, Ulrich, Simonitsch-Klupp, Ingrid, Superti-Furga, Giulio, Staber, Philipp B., Snijder, Berend
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Association for Cancer Research 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9894727/
https://www.ncbi.nlm.nih.gov/pubmed/36125297
http://dx.doi.org/10.1158/2643-3230.BCD-21-0219
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author Heinemann, Tim
Kornauth, Christoph
Severin, Yannik
Vladimer, Gregory I.
Pemovska, Tea
Hadzijusufovic, Emir
Agis, Hermine
Krauth, Maria-Theresa
Sperr, Wolfgang R.
Valent, Peter
Jäger, Ulrich
Simonitsch-Klupp, Ingrid
Superti-Furga, Giulio
Staber, Philipp B.
Snijder, Berend
author_facet Heinemann, Tim
Kornauth, Christoph
Severin, Yannik
Vladimer, Gregory I.
Pemovska, Tea
Hadzijusufovic, Emir
Agis, Hermine
Krauth, Maria-Theresa
Sperr, Wolfgang R.
Valent, Peter
Jäger, Ulrich
Simonitsch-Klupp, Ingrid
Superti-Furga, Giulio
Staber, Philipp B.
Snijder, Berend
author_sort Heinemann, Tim
collection PubMed
description Drug testing in patient biopsy-derived cells can identify potent treatments for patients suffering from relapsed or refractory hematologic cancers. Here we investigate the use of weakly supervised deep learning on cell morphologies (DML) to complement diagnostic marker-based identification of malignant and nonmalignant cells in drug testing. Across 390 biopsies from 289 patients with diverse blood cancers, DML-based drug responses show improved reproducibility and clustering of drugs with the same mode of action. DML does so by adapting to batch effects and by autonomously recognizing disease-associated cell morphologies. In a post hoc analysis of 66 patients, DML-recommended treatments led to improved progression-free survival compared with marker-based recommendations and physician's choice–based treatments. Treatments recommended by both immunofluorescence and DML doubled the fraction of patients achieving exceptional clinical responses. Thus, DML-enhanced ex vivo drug screening is a promising tool in the identification of effective personalized treatments. SIGNIFICANCE: We have recently demonstrated that image-based drug screening in patient samples identifies effective treatment options for patients with advanced blood cancers. Here we show that using deep learning to identify malignant and nonmalignant cells by morphology improves such screens. The presented workflow is robust, automatable, and compatible with clinical routine. This article is highlighted in the In This Issue feature, p. 476
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spelling pubmed-98947272023-02-06 Deep Morphology Learning Enhances Ex Vivo Drug Profiling-Based Precision Medicine Heinemann, Tim Kornauth, Christoph Severin, Yannik Vladimer, Gregory I. Pemovska, Tea Hadzijusufovic, Emir Agis, Hermine Krauth, Maria-Theresa Sperr, Wolfgang R. Valent, Peter Jäger, Ulrich Simonitsch-Klupp, Ingrid Superti-Furga, Giulio Staber, Philipp B. Snijder, Berend Blood Cancer Discov Research Briefs Drug testing in patient biopsy-derived cells can identify potent treatments for patients suffering from relapsed or refractory hematologic cancers. Here we investigate the use of weakly supervised deep learning on cell morphologies (DML) to complement diagnostic marker-based identification of malignant and nonmalignant cells in drug testing. Across 390 biopsies from 289 patients with diverse blood cancers, DML-based drug responses show improved reproducibility and clustering of drugs with the same mode of action. DML does so by adapting to batch effects and by autonomously recognizing disease-associated cell morphologies. In a post hoc analysis of 66 patients, DML-recommended treatments led to improved progression-free survival compared with marker-based recommendations and physician's choice–based treatments. Treatments recommended by both immunofluorescence and DML doubled the fraction of patients achieving exceptional clinical responses. Thus, DML-enhanced ex vivo drug screening is a promising tool in the identification of effective personalized treatments. SIGNIFICANCE: We have recently demonstrated that image-based drug screening in patient samples identifies effective treatment options for patients with advanced blood cancers. Here we show that using deep learning to identify malignant and nonmalignant cells by morphology improves such screens. The presented workflow is robust, automatable, and compatible with clinical routine. This article is highlighted in the In This Issue feature, p. 476 American Association for Cancer Research 2022-11-02 2022-09-13 /pmc/articles/PMC9894727/ /pubmed/36125297 http://dx.doi.org/10.1158/2643-3230.BCD-21-0219 Text en ©2022 The Authors; Published by the American Association for Cancer Research https://creativecommons.org/licenses/by-nc-nd/4.0/This open access article is distributed under the Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 International (CC BY-NC-ND 4.0) license.
spellingShingle Research Briefs
Heinemann, Tim
Kornauth, Christoph
Severin, Yannik
Vladimer, Gregory I.
Pemovska, Tea
Hadzijusufovic, Emir
Agis, Hermine
Krauth, Maria-Theresa
Sperr, Wolfgang R.
Valent, Peter
Jäger, Ulrich
Simonitsch-Klupp, Ingrid
Superti-Furga, Giulio
Staber, Philipp B.
Snijder, Berend
Deep Morphology Learning Enhances Ex Vivo Drug Profiling-Based Precision Medicine
title Deep Morphology Learning Enhances Ex Vivo Drug Profiling-Based Precision Medicine
title_full Deep Morphology Learning Enhances Ex Vivo Drug Profiling-Based Precision Medicine
title_fullStr Deep Morphology Learning Enhances Ex Vivo Drug Profiling-Based Precision Medicine
title_full_unstemmed Deep Morphology Learning Enhances Ex Vivo Drug Profiling-Based Precision Medicine
title_short Deep Morphology Learning Enhances Ex Vivo Drug Profiling-Based Precision Medicine
title_sort deep morphology learning enhances ex vivo drug profiling-based precision medicine
topic Research Briefs
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9894727/
https://www.ncbi.nlm.nih.gov/pubmed/36125297
http://dx.doi.org/10.1158/2643-3230.BCD-21-0219
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