Prediction of Acquired Taxane Resistance Using a Personalized Pathway-Based Machine Learning Method / Journal of the Korean Cancer Association, 대한암학회지
Cancer Research and Treatment
; : 672-684, 2019.
Article
de En
| WPRIM
| ID: wpr-763128
Bibliothèque responsable:
WPRO
ABSTRACT
PURPOSE: This study was conducted to develop and validate an individualized prediction model for automated detection of acquired taxane resistance (ATR). MATERIALS AND METHODS: Penalized regression, combinedwith an individualized pathway score algorithm,was applied to construct a predictive model using publically available genomic cohorts of ATR and intrinsic taxane resistance (ITR). To develop a model with enhanced generalizability, we merged multiple ATR studies then updated the learning parameter via robust cross-study validation. RESULTS: For internal cross-study validation, the ATR model produced a perfect performance with an overall area under the receiver operating curve (AUROC) of 1.000 with an area under the precision-recall curve (AUPRC) of 1.000, a Brier score of 0.007, a sensitivity and a specificity of 100%. The model showed an excellent performance on two independent blind ATR cohorts (overall AUROC of 0.940, AUPRC of 0.940, a Brier score of 0.127). When we applied our algorithm to two large-scale pharmacogenomic resources for ITR, the Cancer Genome Project (CGP) and the Cancer Cell Line Encyclopedia (CCLE), an overall ITR cross-study AUROC was 0.70, which is a far better accuracy than an almost random level reported by previous studies. Furthermore, this model had a high transferability on blind ATR cohorts with an AUROC of 0.69, suggesting that general predictive features may be at work across both ITR and ATR. CONCLUSION: We successfully constructed a multi-study–derived personalized prediction model for ATR with excellent accuracy, generalizability, and transferability.
Mots clés
Texte intégral:
1
Indice:
WPRIM
Sujet Principal:
Résistance aux substances
/
Lignée cellulaire
/
Études de cohortes
/
Sensibilité et spécificité
/
Génome
/
Paclitaxel
/
Taxoïdes
/
Apprentissage machine
/
Apprentissage
/
Méthodes
Type d'étude:
Diagnostic_studies
/
Etiology_studies
/
Incidence_studies
/
Observational_studies
/
Prognostic_studies
/
Risk_factors_studies
Limites du sujet:
Humans
langue:
En
Texte intégral:
Cancer Research and Treatment
Année:
2019
Type:
Article