Predicting Survival in Patients with Advanced NSCLC Treated with Atezolizumab Using Pre- and on-Treatment Prognostic Biomarkers.
Sebastien BenzekryMélanie KarlsenCélestin BigarréAbdessamad El KaoutariBruno GomesMartin SternAles NeubertRené BrunoFrancois MercierSuresh VatakutiPeter CurleCandice JamoisPublished in: Clinical pharmacology and therapeutics (2024)
Existing survival prediction models rely only on baseline or tumor kinetics data and lack machine learning integration. We introduce a novel kinetics-machine learning (kML) model that integrates baseline markers, tumor kinetics, and four on-treatment simple blood markers (albumin, C-reactive protein, lactate dehydrogenase, and neutrophils). Developed for immune-checkpoint inhibition (ICI) in non-small cell lung cancer on three phase II trials (533 patients), kML was validated on the two arms of a phase III trial (ICI and chemotherapy, 377 and 354 patients). It outperformed the current state-of-the-art for individual predictions with a test set C-index of 0.790, 12-months survival accuracy of 78.7% and hazard ratio of 25.2 (95% CI: 10.4-61.3, P < 0.0001) to identify long-term survivors. Critically, kML predicted the success of the phase III trial using only 25 weeks of on-study data (predicted HR = 0.814 (0.64-0.994) vs. final study HR = 0.778 (0.65-0.931)). Modeling on-treatment blood markers combined with predictive machine learning constitutes a valuable approach to support personalized medicine and drug development. The code is publicly available at https://gitlab.inria.fr/benzekry/nlml_onco.
Keyphrases
- phase iii
- phase ii
- machine learning
- open label
- clinical trial
- end stage renal disease
- ejection fraction
- double blind
- newly diagnosed
- placebo controlled
- big data
- artificial intelligence
- peritoneal dialysis
- prognostic factors
- electronic health record
- young adults
- squamous cell carcinoma
- deep learning
- patient reported outcomes
- free survival
- gestational age