Computational Image and Molecular Analysis Reveal Unique Prognostic Features of Immune Architecture in African Versus European American Women with Endometrial Cancer

Author:

Madabhushi Anant1ORCID,Azarianpour-Esfahani Sepideh2ORCID,Khalighi Sirvan3,Aggarwal Arpit3,Viswanathan Vidya3,Fu Pingfu2,Avril Stefanie2

Affiliation:

1. Emory University

2. Case Western Reserve University

3. Georgia Institute of Technology and Emory University

Abstract

Abstract Endometrial cancer (EC) disproportionately affects African American (AA) women in terms of progression and death. In our study, we sought to employ computerized image and bioinformatic analysis to tease out morphologic and molecular differences in EC between AA and European-American (EA) populations. We identified the differences in immune cell spatial patterns between AA and EA populations with markers of tumor biology, including histologic and molecular subtypes. The models performed best when they were trained and validated using data from the same population. Unsupervised clustering revealed a distinct association between immune cell features and known molecular subtypes of endometrial cancer that varied between AA and EA populations. Our genomic analysis revealed two distinct and novel gene sets with mutations associated with improved prognosis in AA and EA patients. Our study findings suggest the need for population-specific risk prediction models for women with endometrial cancer.

Publisher

Research Square Platform LLC

Reference56 articles.

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3. Targeted Therapies in Type II Endometrial Cancers: Too Little, but Not Too Late;Remmerie M;Int. J. Mol. Sci.,2018

4. Racial disparities in outcomes for high-grade uterine cancer: A California cancer registry study;Baskovic M;Cancer Med.,2018

5. Assessment of Prediagnostic Experiences of Black Women With Endometrial Cancer in the United States;Doll KM;JAMA Netw. Open,2020

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