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Integrated machine learning algorithms for prediction of prognosis in ovarian cancer patients based on mitochondrial-related genes

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NIAID Data Ecosystem2026-05-10 收录
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https://figshare.com/articles/dataset/Integrated_machine_learning_algorithms_for_prediction_of_prognosis_in_ovarian_cancer_patients_based_on_mitochondrial-related_genes/32020319
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资源简介:
Mitochondrial dysfunction drives ovarian cancer (OC) progression. This study constructed a robust prognostic model (MITO-OC) based on mitochondria-related genes using ten machine-learning algorithms on TCGA, ICGC, and GEO data. We identified 241 differentially expressed genes and built the optimal MITO-OC model using StepCox[forward] and RSF algorithms (C-index=0.73). The model accurately predicts patient overall survival and strongly correlates with tumor immune infiltration. Furthermore, single-cell and pan-cancer analyses highlighted CHCHD2 as a critical component in OC and other tumors. MITO-OC provides a highly effective, personalized prognostic tool and reveals underlying metabolic mechanisms for OC clinical management.
创建时间:
2026-04-15
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