Machine Learning-Based Model Helps to Decide which Patients May Benefit from Pancreatoduodenectomy

Onco Pub Date : 2023-08-10 DOI:10.3390/onco3030013
E. Vigia, L. Ramalhete, E. Filipe, L. Bicho, A. Nobre, P. Mira, M. Macedo, C. Aguiar, S. Corado, B. Chumbinho, Jorge Balaia, P. Custódio, J. Gonçalves, H. Marques
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Abstract

Pancreatic ductal adenocarcinoma is an invasive tumor with similar incidence and mortality rates. Pancreaticoduodenectomy has morbidity and mortality rates of up to 60% and 5%, respectively. The purpose of our study was to assess preoperative features contributing to unfavorable 1-year survival prognosis. Study Design: Retrospective, single-center study evaluating the impact of preoperative features on short-term survival outcomes in head PDAC patients. Forty-four prior features of 172 patients were tested using different supervised machine learning models. Patient records were randomly divided into training and validation sets (80–20%, respectively), and model performance was assessed by area under curve (AUC) and classification accuracy (CA). Additionally, 33 patients were included as an independent revalidation or holdout dataset group. Results: Eleven relevant features were identified: age, sex, Ca-19-9, jaundice, ERCP with biliary stent, neutrophils, lymphocytes, lymphocyte/neutrophil ratio, neoadjuvant treatment, imaging tumor size, and ASA. Tree regression (tree model) and logistic regression (LR) performed better than the other tested models. The tree model had an AUC = 0.92 and CA = 0.85. LR had an AUC = 0.74 and CA = 0.78, allowing the development of a nomogram based on absolute feature significance. The best performance model was the tree model which allows us to have a decision tree to help clinical decisions. Discussion and conclusions: Based only on preoperative data, it was possible to predict 1-year survival (91.5% vs. 78.1% alive and 70.9% vs. 76.6% deceased for the tree model and LR, respectively). These results contribute to informed decision-making in the selection of which patients with PDAC can benefit from pancreatoduodenectomy. A machine learning algorithm was developed for the recognition of unfavorable 1-year survival prognosis in patients with pancreatic ductal adenocarcinoma. This will contribute to the identification of patients who would benefit from pancreatoduodenectomy. In our cohort, the tree regression model had an AUC = 0.92 and CA = 0.85, whereas the logistic regression had an AUC = 0.74 and CA = 0.78. To further inform decision-making, a decision tree based on tree regression was developed.
基于机器学习的模型有助于确定哪些患者可能从胰十二指肠切除术中受益
胰腺导管腺癌是一种侵袭性肿瘤,其发病率和死亡率相似。胰十二指肠切除术的发病率和死亡率分别高达60%和5%。我们研究的目的是评估导致1年生存预后不良的术前特征。研究设计:回顾性单中心研究,评估头部PDAC患者术前特征对短期生存结果的影响。172名患者的44个先前特征使用不同的监督机器学习模型进行了测试。将患者记录随机分为训练集和验证集(分别为80-20%),并通过曲线下面积(AUC)和分类准确性(CA)评估模型性能。此外,33名患者被纳入独立的再验证或保留数据集组。结果:确定了11个相关特征:年龄、性别、Ca-19-9、黄疸、胆道支架ERCP、中性粒细胞、淋巴细胞、淋巴细胞/中性粒细胞比率、新辅助治疗、影像学肿瘤大小和ASA。树回归(树模型)和逻辑回归(LR)的表现优于其他测试模型。树模型的AUC=0.92,CA=0.85。LR的AUC=0.74,CA=0.78,允许基于绝对特征显著性开发列线图。最佳性能模型是树模型,它允许我们有一个决策树来帮助临床决策。讨论和结论:仅根据术前数据,可以预测1年生存率(树模型和LR的存活率分别为91.5%和78.1%,死亡率分别为70.9%和76.6%)。这些结果有助于在选择哪些PDAC患者可以从胰十二指肠切除术中获益时做出明智的决策。开发了一种机器学习算法,用于识别胰腺导管腺癌患者不利的1年生存预后。这将有助于确定受益于胰十二指肠切除术的患者。在我们的队列中,树回归模型的AUC=0.92,CA=0.85,而逻辑回归的AUC=7.74,CA=0.78。为了进一步为决策提供信息,开发了一个基于树回归的决策树。
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