Development of a dynamic prediction model with the inclusion of time-dependent inflammatory biomarker enhances recurrence prediction after curative surgery for stage II or III gastric cancer.

IF 2.2 4区 医学 Q3 ONCOLOGY
Larbi Aluariachy, Koji Oba, Yutaka Matsuyama, Akihiro Kuroda, Yasuhiro Okumura, Koichi Yagi, Yoko Oshima, Takeo Fukagawa, Hideaki Shimada, Yasuyuki Seto
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引用次数: 0

Abstract

Background: Postoperative recurrence prediction models for gastric cancer often rely on preoperative or immediate postoperative data, overlooking time-dependent biomarkers from follow-up visits. By incorporating longitudinal biomarker data through a landmarking approach, this study aims to enhance recurrence risk prediction.

Methods: This multicenter study included patients who underwent curative surgery for stage II-III gastric cancer from January 2010 to December 2016 in three hospitals in Tokyo, Japan. Their demographic, clinical, and biomarker data were collected from medical records. Biomarkers were collected at surgery and 3, 6, 9, and 12 months postoperatively. Three prediction models-baseline model, landmarking 1.0, and landmarking 1.5-were developed and compared in terms of their prediction accuracy using four measures: concordance probability, calibration plot, Kaplan-Meier curves stratified with predicted risk, and Net Reclassification Improvement. The models aimed to predict recurrence within three years after surgery, with predictions made one year postsurgery.

Results: The study included 274 patients with gastric cancer, with 62 (22.6%) events occurring within three years. As a result of the variable selection process, lymphatic venous Invasion (LVI), pathological T (pT) stage, pathological N (pN) stage, and baseline prognostic nutritional index (PNI) were chosen. Additionally, in landmarking 1.0 and 1.5, S1 treatment status and PNI-change were also selected as time-dependent predictors. Landmarking 1.5, which incorporates time-dependent biomarkers until one year postsurgery, showed superior performance to the other models in all four measures.

Conclusions: Prediction models incorporating postoperative information could serve as a decision-making tool in clinical practice to more precisely distinguish between patients with high and low risk of recurrence.

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建立包含时间依赖性炎症生物标志物的动态预测模型,可提高II期或III期胃癌根治性手术后的复发预测。
背景:胃癌术后复发预测模型通常依赖于术前或术后即时数据,忽略了随访中随时间变化的生物标志物。通过结合纵向生物标志物数据,通过里程碑的方法,本研究旨在提高复发风险预测。方法:这项多中心研究纳入了2010年1月至2016年12月在日本东京三家医院接受II-III期胃癌手术治疗的患者。他们的人口统计、临床和生物标志物数据从医疗记录中收集。于手术及术后3、6、9、12个月收集生物标志物。开发了基线模型、地标1.0和地标1.5三种预测模型,并使用一致性概率、校准图、Kaplan-Meier曲线分层预测风险和净重分类改善四种测量方法比较了它们的预测精度。该模型旨在预测术后三年内的复发,并在术后一年内进行预测。结果:该研究纳入274例胃癌患者,其中62例(22.6%)发生在3年内。作为变量选择过程的结果,选择淋巴静脉浸润(LVI)、病理性T (pT)分期、病理性N (pN)分期和基线预后营养指数(PNI)。此外,在里程碑1.0和1.5中,S1治疗状态和pni变化也被选为时间依赖的预测因子。landmark 1.5纳入了与时间相关的生物标志物,直到手术后一年,在所有四项指标中都表现出优于其他模型的表现。结论:纳入术后信息的预测模型可作为临床实践中的决策工具,更准确地区分高、低复发风险患者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
3.70
自引率
8.30%
发文量
177
审稿时长
3-8 weeks
期刊介绍: Japanese Journal of Clinical Oncology is a multidisciplinary journal for clinical oncologists which strives to publish high quality manuscripts addressing medical oncology, clinical trials, radiology, surgery, basic research, and palliative care. The journal aims to contribute to the world"s scientific community with special attention to the area of clinical oncology and the Asian region. JJCO publishes various articles types including: ・Original Articles ・Case Reports ・Clinical Trial Notes ・Cancer Genetics Reports ・Epidemiology Notes ・Technical Notes ・Short Communications ・Letters to the Editors ・Solicited Reviews
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