Data-driven patient stratification and drug target discovery by using medical information and serum proteome data of idiopathic pulmonary fibrosis patients

Author:

Natsume-Kitatani Yayoi1ORCID,Itoh Mari N2,Takeda Yoshito3,Kuroda Masataka2,Hirata Haruhiko3,Miyake Kohtaro3,Shiroyama Takayuki3,Shirai Yuya3,Noda Yoshimi3,Adachi Yuichi3,Enomoto Takatoshi3,Amiya Saori3,Adachi Jun4,Narumi Ryohei4,Muraoka Satoshi4,Tomonaga Takeshi4,Kurohashi Sadao5,Cheng Fei5,Tanaka Ribeka5,Yada Shuntaro6,Aramaki Eiji6,Wakamiya Shoko6,Chen Yi-An2,Higuchi Chihiro2,Nojima Yosui2,Fujiwara Takeshi2,Nagao Chioko2,Takeda Toshihiro7,Matsumura Yasushi8,Mizuguchi Kenji2,Kumanogoh Atsushi3,Ueda Naonori9

Affiliation:

1. National Institutes of Biomedical Innovation, Health and Nutrition

2. Laboratory of Bioinformatics, Artificial Intelligence Center for Health and Biomedical Research, National Institutes of Biomedical Innovation, Health and Nutrition

3. Department of Respiratory Medicine and Clinical Immunology, Osaka University Graduate School of Medicine

4. Laboratory of Proteomics for Drug Discovery, Center for Drug Design Research, National Institutes of Biomedical Innovation, Health and Nutrition

5. Graduate School of Informatics, Kyoto University

6. Graduate School of Science and Technology, Nara Institute of Science and Technology (NAIST)

7. Osaka University Graduate School of Medicine

8. Osaka National Hospital

9. RIKEN Center for Advanced Intelligence Project

Abstract

Abstract Medical information is valuable information obtained from humans regarding the phenotype of diseases. Omics data is informative to understand diseases at biomolecular level. We aimed to detect patient stratification patterns in a data-driven manner and identify candidate drug targets by investigating biomolecules that are linked to phenotype-level characteristics of a targeted disease. Such data integration is challenging because the data types of them are different, and these data contain many items that are not directly related to the disease. Hence, we developed an algorithm, subset binding, to find inter-related attributes in heterogeneous data. To search for potential drug targets for intractable IPF (idiopathic pulmonary fibrosis), we collected medical information and proteome data of serum extracellular vesicles from patients with interstitial pneumonia including IPF. Our approach detected 20 proteins linked with IPF characteristics, whose expression intensities were confirmed to be high in fibrotic areas of human lung tissues. Furthermore, ponatinib, which inhibits these proteins, suppressed EMT (epithelial mesenchymal transition) in vitro. This workflow paves the way for data-driven drug target discovery even for intractable diseases whose mechanisms of pathogenesis are not fully understood.

Publisher

Research Square Platform LLC

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