Machine-Learning Algorithms Using Systemic Inflammatory Markers to Predict the Oncologic Outcomes of Colorectal Cancer After Surgery

Background This study aimed to investigate the clinical significance of machine-learning (ML) algorithms based on serum inflammatory markers to predict survival outcomes for patients with colorectal cancer (CRC). Methods The study included 941 patients with stages I to III CRC. Based on random fores...

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Veröffentlicht in:Annals of surgical oncology 2023-12, Vol.30 (13), p.8717-8726
Hauptverfasser: Yang, Songsoo, Jang, Hyosoon, Park, In Kyu, Lee, Hye Sun, Lee, Kang Young, Oh, Ga Eul, Park, Chihyun, Kang, Jeonghyun
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Sprache:eng
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Zusammenfassung:Background This study aimed to investigate the clinical significance of machine-learning (ML) algorithms based on serum inflammatory markers to predict survival outcomes for patients with colorectal cancer (CRC). Methods The study included 941 patients with stages I to III CRC. Based on random forest algorithms using 15 compositions of inflammatory markers, four different prediction scores (DFS score-1, DFS score-2, DFS score-3, and DFS score-4) were developed for the Yonsei cohort (training set, n = 803) and tested in the Ulsan cohort (test set, n = 138). The Cox proportional hazards model was used to determine correlation between prediction scores and disease-free survival (DFS). Harrell’s concordance index (C-index) was used to compare the predictive ability of prediction scores for each composition. Results The multivariable analysis showed the DFS score-4 to be an independent prognostic factor after adjustment for clinicopathologic factors in both the training and test sets (hazard ratio [HR], 8.98; 95% confidence interval [CI] 6.7–12.04; P < 0.001 for the training set and HR, 2.55; 95% CI 1.1–5.89; P = 0.028 for the test set]. With regard to DFS, the highest C-index among single compositions was observed in the lymphocyte-to-C-reactive protein ratio (LCR) (0.659; 95% CI 0.656–0.662), and the C-index of DFS score-4 (0.727; 95% CI 0.724–0.729) was significantly higher than that of LCR in the test set. The C-index of DFS score-3 (0.725; 95% CI 0.723–0.728) was similar to that of DFS score-4, but higher than that of DFS score-2 (0.680; 95% CI 0.676–0.683). Conclusions The ML-based approaches showed prognostic utility in predicting DFS. They could enhance clinical use of inflammatory markers in patients with CRC.
ISSN:1068-9265
1534-4681
DOI:10.1245/s10434-023-14136-5