Development and Validation of a Machine-Learning Model to Predict Early Recurrence of Intrahepatic Cholangiocarcinoma

Background The high incidence of early recurrence after hepatectomy for intrahepatic cholangiocarcinoma (ICC) has a detrimental effect on overall survival (OS). Machine-learning models may improve the accuracy of outcome prediction for malignancies. Methods Patients who underwent curative-intent hep...

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Veröffentlicht in:Annals of surgical oncology 2023-09, Vol.30 (9), p.5406-5415
Hauptverfasser: Alaimo, Laura, Lima, Henrique A., Moazzam, Zorays, Endo, Yutaka, Yang, Jason, Ruzzenente, Andrea, Guglielmi, Alfredo, Aldrighetti, Luca, Weiss, Matthew, Bauer, Todd W., Alexandrescu, Sorin, Poultsides, George A., Maithel, Shishir K., Marques, Hugo P., Martel, Guillaume, Pulitano, Carlo, Shen, Feng, Cauchy, François, Koerkamp, Bas Groot, Endo, Itaru, Kitago, Minoru, Pawlik, Timothy M.
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Sprache:eng
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Zusammenfassung:Background The high incidence of early recurrence after hepatectomy for intrahepatic cholangiocarcinoma (ICC) has a detrimental effect on overall survival (OS). Machine-learning models may improve the accuracy of outcome prediction for malignancies. Methods Patients who underwent curative-intent hepatectomy for ICC were identified using an international database. Three machine-learning models were trained to predict early recurrence (< 12 months after hepatectomy) using 14 clinicopathologic characteristics. The area under the receiver operating curve (AUC) was used to assess their discrimination ability. Results In this study, 536 patients were randomly assigned to training ( n = 376, 70.1%) and testing ( n = 160, 29.9%) cohorts. Overall, 270 (50.4%) patients experienced early recurrence (training: n = 150 [50.3%] vs testing: n = 81 [50.6%]), with a median tumor burden score (TBS) of 5.6 (training: 5.8 [interquartile range {IQR}, 4.1–8.1] vs testing: 5.5 [IQR, 3.7–7.9]) and metastatic/undetermined nodes (N1/NX) in the majority of the patients (training: n = 282 [75.0%] vs testing n = 118 [73.8%]). Among the three different machine-learning algorithms, random forest (RF) demonstrated the highest discrimination in the training/testing cohorts (RF [AUC, 0.904/0.779] vs support vector machine [AUC, 0.671/0.746] vs logistic regression [AUC, 0.668/0.745]). The five most influential variables in the final model were TBS, perineural invasion, microvascular invasion, CA 19-9 lower than 200 U/mL, and N1/NX disease. The RF model successfully stratified OS relative to the risk of early recurrence. Conclusions Machine-learning prediction of early recurrence after ICC resection may inform tailored counseling, treatment, and recommendations. An easy-to-use calculator based on the RF model was developed and made available online.
ISSN:1068-9265
1534-4681
DOI:10.1245/s10434-023-13636-8