Department of Statistics, Rice University, Houston, USA.
Department of Behavioral Sciences and Social Medicine, Florida State University College of Medicine, Tallahassee, USA.
Cancer Causes Control. 2024 Feb;35(2):253-263. doi: 10.1007/s10552-023-01785-w. Epub 2023 Sep 13.
We built Bayesian Network (BN) models to explain roles of different patient-specific factors affecting racial differences in breast cancer stage at diagnosis, and to identify healthcare related factors that can be intervened to reduce racial health disparities.
We studied women age 67-74 with initial diagnosis of breast cancer during 2006-2014 in the National Cancer Institute's SEER-Medicare dataset. Our models included four measured variables (tumor grade, hormone receptor status, screening utilization and biopsy delay) expressed through two latent pathways-a tumor biology path, and health-care access/utilization path. We used various Bayesian model assessment tools to evaluate these two latent pathways as well as each of the four measured variables in explaining racial disparities in stage-at-diagnosis.
Among 3,010 Black non-Hispanic (NH) and 30,310 White NH breast cancer patients, respectively 70.2% vs 76.9% were initially diagnosed at local stage, 25.3% vs 20.3% with regional stage, and 4.56% vs 2.80% with distant stage-at-diagnosis. Overall, BN performed approximately 4.7 times better than Classification And Regression Tree (CART) (Breiman L, Friedman JH, Stone CJ, Olshen RA. Classification and regression trees. CRC press; 1984) in predicting stage-at-diagnosis. The utilization of screening mammography is the most prominent contributor to the accuracy of the BN model. Hormone receptor (HR) status and tumor grade are useful for explaining racial disparity in stage-at diagnosis, while log-delay in biopsy impeded good prediction.
Mammography utilization had a significant effect on racial differences in breast cancer stage-at-diagnosis, while tumor biology factors had less impact. Biopsy delay also aided in predicting local and regional stages-at-diagnosis for Black NH women but not for white NH women.
我们构建了贝叶斯网络(BN)模型,以解释影响乳腺癌诊断时种族差异的不同患者特异性因素的作用,并确定可干预以减少种族健康差异的医疗保健相关因素。
我们研究了 2006-2014 年间国家癌症研究所 SEER-医疗保险数据集内年龄在 67-74 岁之间、初次诊断为乳腺癌的女性。我们的模型包括四个经两种潜在途径表达的测量变量(肿瘤分级、激素受体状态、筛查利用和活检延迟),这两种途径分别为肿瘤生物学途径和医疗保健获取/利用途径。我们使用各种贝叶斯模型评估工具来评估这两种潜在途径以及四个测量变量中的每一个在解释诊断时种族差异方面的作用。
在 3010 名非西班牙裔黑人(NH)和 30310 名西班牙裔 NH 乳腺癌患者中,分别有 70.2%和 76.9%最初被诊断为局部期,25.3%和 20.3%为区域性,4.56%和 2.80%为远处诊断期。总体而言,BN 在预测诊断时的分期方面的表现比分类和回归树(CART)(Breiman L,Friedman JH,Stone CJ,Olshen RA。Classification and regression trees. CRC press;1984)大约好 4.7 倍。筛查乳房 X 线摄影的利用是 BN 模型准确性的最主要贡献因素。激素受体(HR)状态和肿瘤分级对解释诊断时的种族差异有用,而活检延迟则阻碍了良好的预测。
乳房 X 线摄影的利用对乳腺癌诊断时的种族差异有显著影响,而肿瘤生物学因素的影响较小。活检延迟也有助于预测黑人 NH 女性的局部和区域性诊断期,但对白人 NH 女性则不然。