Background: There are documented differences in Breast cancer (BrCA) presentations and outcomes between Black and White patients. In addition to molecular factors, socioeconomic, racial, and clinical factors result in disparities in outcomes for women in the United States. Using machine learning and unsupervised biclustering methods within a multiomics framework, here we sought to shed light on the biological and clinical underpinnings of observed differences between Black and White BrCA patients.
Materials And Methods: We examined The Cancer Genome Atlas BrCA samples from stage II patients aged 50 or younger that are Black (BAA50) or White (W50) (n = 139 patients; 36 BAA50 and 103 W50) These patients were chosen because marked differences in survival were observed in an earlier study. A variety of multiomic data sets were analyzed to further characterize the clinical and molecular disparities for insights.
Results: We coupled RNAseq data with protein-protein interaction as well as BrCA-specific protein co-expression network data to identify 2 novel biclusters. These biclusters are significantly associated with clinical features including race, number of lymph nodes involved with disease, estrogen receptor status, progesterone receptor status and menopausal status. There were also differentially mutated genes. Using DNA methylation data, we identified differentially methylated genes. Machine learning algorithms were trained on differential methylation values of driver genes. The trained algorithms were successful in predicting the bicluster assignment of each sample.
Conclusion: These results demonstrate that there was a significant association between the cluster membership and BAA50 and W50 cohorts, indicating that these biclusters accurately stratify these cohorts.
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http://dx.doi.org/10.1016/j.clbc.2024.11.015 | DOI Listing |
J Food Sci
January 2025
College of Pharmacy, Changchun University of Chinese Medicine, Changchun, China.
Ginseng and its processed products are valued as health foods for their nutritional benefits. The traditional forms of processed ginseng include white ginseng, dali ginseng (DLG), red ginseng (RG), and black ginseng (BG). However, the impact of processing on the chemical composition and anti-tumor efficacy of these products is not well understood.
View Article and Find Full Text PDFAIDS
January 2025
Center for Biomedical Modeling, Semel Institute for Neuroscience and Human Behavior, David Geffen School of Medicine, University of California, Los Angeles, CA.
Objectives: To predict the burden of HIV in the United States (US) nationally and by region, transmission type, and race/ethnicity through 2030.
Methods: Using publicly available data from the CDC NCHHSTP AtlasPlus dashboard, we generated 11-year prospective forecasts of incident HIV diagnoses nationally and by region (South, non-South), race/ethnicity (White, Hispanic/Latino, Black/African American), and transmission type (Injection-Drug Use, Male-to-Male Sexual Contact (MMSC), and Heterosexual Contact (HSC)). We employed weighted (W) and unweighted (UW) n-sub-epidemic ensemble models, calibrated using 12 years of historical data (2008-2019), and forecasted trends for 2020-2030.
Res Aging
January 2025
Rory Meyers College of Nursing, New York University, New York City, NY, USA.
This study examines whether age-related cognitive decline varies by race/ethnicity and how edentulism moderates these effects. Data from the Health and Retirement Study (2006-2020), including 23,669 respondents aged 51 and above across 189,352 person-wave observations were analyzed. Of all respondents, 13.
View Article and Find Full Text PDFChild Dev
January 2025
Institute of Child Development, University of Minnesota Twin Cities, Minneapolis, Minnesota, USA.
This study used a natural experiment design to examine the impact of ethnic studies courses on students' ethnic-racial identity (ERI) development, multicultural attitudes, and civic engagement during the 2021-2022 school year in Minneapolis, MN (N = 535; 33.5% White, 29.5% Black, 21.
View Article and Find Full Text PDFJCO Clin Cancer Inform
November 2024
College of Computing and Informatics, Drexel University, Philadelphia, PA.
Purpose: Machine learning algorithms are used for predictive modeling in medicine, but studies often do not evaluate or report on the potential biases of the models. Our purpose was to develop clinical prediction models for readmission after surgery in colorectal cancer (CRC) patients and to examine their potential for racial bias.
Methods: We used the 2012-2020 American College of Surgeons' National Surgical Quality Improvement Program (ACS-NSQIP) Participant Use File and Targeted Colectomy File.
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