Machine-learning algorithms predict breast cancer patient survival from UK Biobank whole-exome sequencing data

We tested whether machine-learning algorithm could find biomarkers predicting overall survival in breast cancer patients using blood-based whole-exome sequencing data. Whole-exome sequencing data derived from 1181 female breast cancer patients within the UK Biobank was collected. We found feature ge...

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Veröffentlicht in:Biomarkers in medicine 2021-11, Vol.15 (16), p.1529-1539
Hauptverfasser: Jang, Bum-Sup, Kim, In Ah
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Sprache:eng
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Zusammenfassung:We tested whether machine-learning algorithm could find biomarkers predicting overall survival in breast cancer patients using blood-based whole-exome sequencing data. Whole-exome sequencing data derived from 1181 female breast cancer patients within the UK Biobank was collected. We found feature genes (n = 50) regarding total mutation burden using the long short-term memory model. Then, we developed the XGBoost survival model with selected feature genes. The XGBoost survival model performed acceptably, with a concordance index of 0.75 and a scaled Brier score of 0.146 in terms of overall survival prediction. The high-mutation group exhibited inferior overall survival compared with the low-mutation group in patients ≥56 years (log-rank test, p = 0.042). We showed that machine-learning algorithms can be used to predict overall survival in breast cancer patients from blood-based whole-exome sequencing data.
ISSN:1752-0363
1752-0371
DOI:10.2217/bmm-2021-0280