Learning Normal Representations for Blood Biomarkers
学习正常表示以血清生物标志物
发表机构 * Department of Biomedical Informatics, Harvard Medical School(哈佛医学院生物医学信息学系) ; Department of Systems Biology, Harvard Medical School(哈佛医学院系统生物学系) ; Department of Medicine, Brigham and Women’s Hospital(布里洛妇产科医院医学系) ; Department of Mathematics, Johns Hopkins University(约翰霍普金斯大学数学系) ; Computational Health Informatics Program (CHIP), Boston Children’s Hospital(波士顿儿童医院计算健康信息学计划) ; The Ivan and Francesca Berkowitz Family Living Laboratory Collaboration at Harvard Medical School and Clalit Research Institute(哈佛医学院伊万和弗rancesca伯克伍德家庭生活实验室合作项目及克劳斯研究机构) ; Clalit Research Institute, Innovation Division, Clalit Health Services(克劳斯研究机构创新部门,克劳斯健康服务) ; Faculty of Computer and Information Science, Ben Gurion University(本· Gurion大学计算机与信息科学系)
AI总结 该研究提出NORMA框架,通过结合患者历史和人口水平数据生成更精确的参考区间,以改善血清生物标志物的个性化解读,避免过度个性化导致的误诊风险。