通过机器学习预测胰腺癌治疗的完成情况。

IF 2 3区 医学 Q3 ONCOLOGY Journal of Surgical Oncology Pub Date : 2024-08-19 DOI:10.1002/jso.27812
Shamsher A Pasha, Abdullah Khalid, Todd Levy, Lyudmyla Demyan, Sarah Hartman, Elliot Newman, Matthew J Weiss, Daniel A King, Theodoros Zanos, Marcovalerio Melis
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引用次数: 0

摘要

背景:化疗可提高胰腺癌(PC)患者的术后生存率,但只有不到60%的患者完成了辅助治疗,还有一小部分患者接受了新辅助治疗。我们的研究旨在通过机器学习(ML)预测哪些患者将完成术前或术后化疗:我们将胰腺数据库中的可切除 PC 患者分为两类:完成所有预期治疗(即手术加新辅助化疗或辅助化疗)的患者和未完成治疗的患者。我们采用了带lasso惩罚的逻辑回归和极端梯度提升模型进行预测,并通过自举法进一步检验其灵敏度:在 208 名患者中,中位年龄为 69 岁,女性占 49.5%,白人占 62%。大多数患者的东部合作肿瘤学组(ECOG)表现状态≤2。PC主要累及胰头。分别有26%和47.1%的患者接受了新辅助化疗和辅助化疗,但只有49%的患者完成了所有治疗。未完成治疗与年龄较大和ECOG状态较低有关。预后不良因素包括糖尿病恶化、年龄、充血性心力衰竭、高体重指数、PC家族史、初始胆红素水平以及肿瘤位于胰头。模型还标出了影响治疗完成的其他因素,如黄疸和特定癌症标志物。两个模型的预测准确率(接收者操作特征曲线下面积)均为 0.67,随着数据集的扩大,预测准确率有望提高:我们的研究结果凸显了 ML 预测 PC 治疗完成度的潜力,强调了特定术前因素的重要性。数据量的增加可能会提高预测的准确性,为个性化患者策略提供有价值的见解。
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Machine learning to predict completion of treatment for pancreatic cancer.

Background: Chemotherapy enhances survival rates for pancreatic cancer (PC) patients postsurgery, yet less than 60% complete adjuvant therapy, with a smaller fraction undergoing neoadjuvant treatment. Our study aimed to predict which patients would complete pre- or postoperative chemotherapy through machine learning (ML).

Methods: Patients with resectable PC identified in our institutional pancreas database were grouped into two categories: those who completed all intended treatments (i.e., surgery plus either neoadjuvant or adjuvant chemotherapy), and those who did not. We applied logistic regression with lasso penalization and an extreme gradient boosting model for prediction, and further examined it through bootstrapping for sensitivity.

Results: Among 208 patients, the median age was 69, with 49.5% female and 62% white participants. Most had an Eastern Cooperative Oncology Group (ECOG) performance status of ≤2. The PC predominantly affected the pancreatic head. Neoadjuvant and adjuvant chemotherapies were received by 26% and 47.1%, respectively, but only 49% completed all treatments. Incomplete therapy was correlated with older age and lower ECOG status. Negative prognostic factors included worsening diabetes, age, congestive heart failure, high body mass index, family history of PC, initial bilirubin levels, and tumor location in the pancreatic head. The models also flagged other factors, such as jaundice and specific cancer markers, impacting treatment completion. The predictive accuracy (area under the receiver operating characteristic curve) was 0.67 for both models, with performance expected to improve with larger datasets.

Conclusions: Our findings underscore the potential of ML to forecast PC treatment completion, highlighting the importance of specific preoperative factors. Increasing data volumes may enhance predictive accuracy, offering valuable insights for personalized patient strategies.

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来源期刊
CiteScore
4.70
自引率
4.00%
发文量
367
审稿时长
2 months
期刊介绍: The Journal of Surgical Oncology offers peer-reviewed, original papers in the field of surgical oncology and broadly related surgical sciences, including reports on experimental and laboratory studies. As an international journal, the editors encourage participation from leading surgeons around the world. The JSO is the representative journal for the World Federation of Surgical Oncology Societies. Publishing 16 issues in 2 volumes each year, the journal accepts Research Articles, in-depth Reviews of timely interest, Letters to the Editor, and invited Editorials. Guest Editors from the JSO Editorial Board oversee multiple special Seminars issues each year. These Seminars include multifaceted Reviews on a particular topic or current issue in surgical oncology, which are invited from experts in the field.
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