Robust Cluster Prediction Across Data Types Validates Association of Sex and Therapy Response in GBM

跨数据类型的稳健聚类预测验证了性别与胶质母细胞瘤治疗反应之间的关联

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Abstract

BACKGROUND: Previous studies have described sex-specific patient subtyping in glioblastoma. The cluster labels associated with these "legacy data" were used to train a predictive model capable of recapitulating this clustering in contemporary contexts. METHODS: We used robust ensemble machine learning to train a model using gene microarray data to perform multi-platform predictions including RNA-seq and potentially scRNA-seq. RESULTS: The engineered feature set was composed of many previously reported genes that are associated with patient prognosis. Interestingly, these well-known genes formed a predictive signature only for female patients, and the application of the predictive signature to male patients produced unexpected results. CONCLUSIONS: This work demonstrates how annotated "legacy data" can be used to build robust predictive models capable of multi-target predictions across multiple platforms.

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