Machine Learning for Digital Scoring of PRMT6 in Immunohistochemical Labeled Lung Cancer

Author:

Mahmoud Abeer M.12ORCID,Brister Eileen3,David Odile3,Valyi-Nagy Klara3,Sverdlov Maria4,Gann Peter H.3ORCID,Kim Sage J.5ORCID

Affiliation:

1. Department of Medicine, Division of Endocrinology, College of Medicine, University of Illinois Cancer Center, University of Illinois Chicago, Chicago, IL 60612, USA

2. Department of Kinesiology and Nutrition, College of Applied Health Sciences, University of Illinois Cancer Center, University of Illinois Chicago, Chicago, IL 60612, USA

3. Department of Pathology, College of Medicine, University of Illinois Chicago, Chicago, IL 60612, USA

4. Research Histology and Imaging Collaborative Core, College of Medicine, University of Illinois Chicago, Chicago, IL 60612, USA

5. Division of Health Policy & Administration, School of Public Health, University of Illinois Chicago, Chicago, IL 60612, USA

Abstract

Lung cancer is the leading cause of cancer death in the U.S. Therefore, it is imperative to identify novel biomarkers for the early detection and progression of lung cancer. PRMT6 is associated with poor lung cancer prognosis. However, analyzing PRMT6 expression manually in large samples is time-consuming posing a significant limitation for processing this biomarker. To overcome this issue, we trained and validated an automated method for scoring PRMT6 in lung cancer tissues, which can then be used as the standard method in future larger cohorts to explore population-level associations between PRMT6 expression and sociodemographic/clinicopathologic characteristics. We evaluated the ability of a trained artificial intelligence (AI) algorithm to reproduce the PRMT6 immunoreactive scores obtained by pathologists. Our findings showed that tissue segmentation to cancer vs. non-cancer tissues was the most critical parameter, which required training and adjustment of the algorithm to prevent scoring non-cancer tissues or ignoring relevant cancer cells. The trained algorithm showed a high concordance with pathologists with a correlation coefficient of 0.88. The inter-rater agreement was significant, with an intraclass correlation of 0.95 and a scale reliability coefficient of 0.96. In conclusion, we successfully optimized a machine learning algorithm for scoring PRMT6 expression in lung cancer that matches the degree of accuracy of scoring by pathologists.

Funder

National Institute on Minority Health and Health Disparities

National Institute of Health-NHLBI

Publisher

MDPI AG

Subject

Cancer Research,Oncology

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