Connecting Histopathology Imaging and Proteomics in Kidney Cancer through Machine Learning

Proteomics data encode molecular features of diagnostic value and accurately reflect key underlying biological mechanisms in cancers. Histopathology imaging is a well-established clinical approach to cancer diagnosis. The predictive relationship between large-scale proteomics and H&E-stained...

Full description

Bibliographic Details
Main Authors: Francisco Azuaje, Sang-Yoon Kim, Daniel Perez Hernandez, Gunnar Dittmar
Format: Article
Language:English
Published: MDPI AG 2019-09-01
Series:Journal of Clinical Medicine
Subjects:
Online Access:https://www.mdpi.com/2077-0383/8/10/1535
id doaj-d0a547fbac174e1795380c5ea511aa29
record_format Article
spelling doaj-d0a547fbac174e1795380c5ea511aa292020-11-25T00:04:56ZengMDPI AGJournal of Clinical Medicine2077-03832019-09-01810153510.3390/jcm8101535jcm8101535Connecting Histopathology Imaging and Proteomics in Kidney Cancer through Machine LearningFrancisco Azuaje0Sang-Yoon Kim1Daniel Perez Hernandez2Gunnar Dittmar3Quantitative Biology Unit, Luxembourg Institute of Health (LIH), Strassen L-1445, LuxembourgQuantitative Biology Unit, Luxembourg Institute of Health (LIH), Strassen L-1445, LuxembourgQuantitative Biology Unit, Luxembourg Institute of Health (LIH), Strassen L-1445, LuxembourgQuantitative Biology Unit, Luxembourg Institute of Health (LIH), Strassen L-1445, LuxembourgProteomics data encode molecular features of diagnostic value and accurately reflect key underlying biological mechanisms in cancers. Histopathology imaging is a well-established clinical approach to cancer diagnosis. The predictive relationship between large-scale proteomics and H&E-stained histopathology images remains largely uncharacterized. Here we investigate such associations through the application of machine learning, including deep neural networks, to proteomics and histology imaging datasets generated by the Clinical Proteomic Tumor Analysis Consortium (CPTAC) from clear cell renal cell carcinoma patients. We report robust correlations between a set of diagnostic proteins and predictions generated by an imaging-based classification model. Proteins significantly correlated with the histology-based predictions are significantly implicated in immune responses, extracellular matrix reorganization, and metabolism. Moreover, we showed that the genes encoding these proteins also reliably recapitulate the biological associations with imaging-derived predictions based on strong gene−protein expression correlations. Our findings offer novel insights into the integrative modeling of histology and omics data through machine learning, as well as the methodological basis for new research opportunities in this and other cancer types.https://www.mdpi.com/2077-0383/8/10/1535artificial intelligencemachine learninghistopathology imagingproteomicscancer diagnosisclear cell renal cell carcinoma
collection DOAJ
language English
format Article
sources DOAJ
author Francisco Azuaje
Sang-Yoon Kim
Daniel Perez Hernandez
Gunnar Dittmar
spellingShingle Francisco Azuaje
Sang-Yoon Kim
Daniel Perez Hernandez
Gunnar Dittmar
Connecting Histopathology Imaging and Proteomics in Kidney Cancer through Machine Learning
Journal of Clinical Medicine
artificial intelligence
machine learning
histopathology imaging
proteomics
cancer diagnosis
clear cell renal cell carcinoma
author_facet Francisco Azuaje
Sang-Yoon Kim
Daniel Perez Hernandez
Gunnar Dittmar
author_sort Francisco Azuaje
title Connecting Histopathology Imaging and Proteomics in Kidney Cancer through Machine Learning
title_short Connecting Histopathology Imaging and Proteomics in Kidney Cancer through Machine Learning
title_full Connecting Histopathology Imaging and Proteomics in Kidney Cancer through Machine Learning
title_fullStr Connecting Histopathology Imaging and Proteomics in Kidney Cancer through Machine Learning
title_full_unstemmed Connecting Histopathology Imaging and Proteomics in Kidney Cancer through Machine Learning
title_sort connecting histopathology imaging and proteomics in kidney cancer through machine learning
publisher MDPI AG
series Journal of Clinical Medicine
issn 2077-0383
publishDate 2019-09-01
description Proteomics data encode molecular features of diagnostic value and accurately reflect key underlying biological mechanisms in cancers. Histopathology imaging is a well-established clinical approach to cancer diagnosis. The predictive relationship between large-scale proteomics and H&E-stained histopathology images remains largely uncharacterized. Here we investigate such associations through the application of machine learning, including deep neural networks, to proteomics and histology imaging datasets generated by the Clinical Proteomic Tumor Analysis Consortium (CPTAC) from clear cell renal cell carcinoma patients. We report robust correlations between a set of diagnostic proteins and predictions generated by an imaging-based classification model. Proteins significantly correlated with the histology-based predictions are significantly implicated in immune responses, extracellular matrix reorganization, and metabolism. Moreover, we showed that the genes encoding these proteins also reliably recapitulate the biological associations with imaging-derived predictions based on strong gene−protein expression correlations. Our findings offer novel insights into the integrative modeling of histology and omics data through machine learning, as well as the methodological basis for new research opportunities in this and other cancer types.
topic artificial intelligence
machine learning
histopathology imaging
proteomics
cancer diagnosis
clear cell renal cell carcinoma
url https://www.mdpi.com/2077-0383/8/10/1535
work_keys_str_mv AT franciscoazuaje connectinghistopathologyimagingandproteomicsinkidneycancerthroughmachinelearning
AT sangyoonkim connectinghistopathologyimagingandproteomicsinkidneycancerthroughmachinelearning
AT danielperezhernandez connectinghistopathologyimagingandproteomicsinkidneycancerthroughmachinelearning
AT gunnardittmar connectinghistopathologyimagingandproteomicsinkidneycancerthroughmachinelearning
_version_ 1725427211674058752