Lan Yu-Yin, Han Jing, Liu Yan-Yan, Lan Lei
Department of Stomatology, Shanghai Municipal Hospital of Traditional Chinese Medicine, Shanghai University of Traditional Chinese Medicine, Shanghai 200071, China.
Department of Biobank, Zhejiang Cancer Hospital, Hangzhou 310005, Zhejiang Province, China.
World J Gastrointest Surg. 2024 Aug 27;16(8):2602-2611. doi: 10.4240/wjgs.v16.i8.2602.
This study investigated the construction and clinical validation of a predictive model for neuroaggression in patients with gastric cancer. Gastric cancer is one of the most common malignant tumors in the world, and neuroinvasion is the key factor affecting the prognosis of patients. However, there is a lack of systematic analysis on the construction and clinical application of its prediction model. This study adopted a single-center retrospective study method, collected a large amount of clinical data, and applied statistics and machine learning technology to build and verify an effective prediction model for neuroaggression, with a view to providing scientific basis for clinical treatment decisions and improving the treatment effect and survival rate of patients with gastric cancer.
To investigate the value of a model based on clinical data, spectral computed tomography (CT) parameters and image omics characteristics for the preoperative prediction of nerve invasion in patients with gastric cancer.
A retrospective analysis was performed on 80 gastric cancer patients who underwent preoperative energy spectrum CT at our hospital between January 2022 and August 2023, these patients were divided into a positive group and a negative group according to their pathological results. Clinicopathological data were collected, the energy spectrum parameters of primary gastric cancer lesions were measured, and single factor analysis was performed. A total of 214 image omics features were extracted from two-phase mixed energy images, and the features were screened by single factor analysis and a support vector machine. The variables with statistically significant differences were included in logistic regression analysis to construct a prediction model, and the performance of the model was evaluated using the subject working characteristic curve.
There were statistically significant differences in sex, carbohydrate antigen 199 expression, tumor thickness, Lauren classification and Borrmann classification between the two groups (all < 0.05). Among the energy spectrum parameters, there were statistically significant differences in the single energy values (CT60-CT110 keV) at the arterial stage between the two groups (all < 0.05) and statistically significant differences in CT values, iodide group values, standardized iodide group values and single energy values except CT80 keV at the portal vein stage between the two groups (all < 0.05). The support vector machine model with the largest area under the curve was selected by image omics analysis, and its area under the curve, sensitivity, specificity, accuracy, value and parameters were 0.843, 0.923, 0.714, 0.925, < 0.001, and c:g 2.64:10.56, respectively. Finally, based on the logistic regression algorithm, a clinical model, an energy spectrum CT model, an imaging model, a clinical + energy spectrum model, a clinical + imaging model, an energy spectrum + imaging model, and a clinical + energy spectrum + imaging model were established, among which the clinical + energy spectrum + imaging model had the best efficacy in diagnosing gastric cancer nerve invasion. The area under the curve, optimal threshold, Youden index, sensitivity and specificity were 0.927 (95%CI: 0.850-1.000), 0.879, 0.778, 0.778, and 1.000, respectively.
The combined model based on clinical features, spectral CT parameters and imaging data has good value for the preoperative prediction of gastric cancer neuroinvasion.
本研究旨在构建并临床验证胃癌患者神经侵犯的预测模型。胃癌是全球最常见的恶性肿瘤之一,神经侵犯是影响患者预后的关键因素。然而,目前缺乏对其预测模型构建及临床应用的系统分析。本研究采用单中心回顾性研究方法,收集大量临床数据,并应用统计学和机器学习技术构建并验证神经侵犯的有效预测模型,以期为临床治疗决策提供科学依据,提高胃癌患者的治疗效果和生存率。
探讨基于临床数据、光谱计算机断层扫描(CT)参数及影像组学特征的模型对胃癌患者术前神经侵犯的预测价值。
对2022年1月至2023年8月在我院接受术前能谱CT检查的80例胃癌患者进行回顾性分析,根据病理结果将患者分为阳性组和阴性组。收集临床病理资料,测量原发性胃癌病灶的能谱参数,并进行单因素分析。从双期混合能量图像中提取214个影像组学特征,通过单因素分析和支持向量机对特征进行筛选。将差异有统计学意义的变量纳入逻辑回归分析构建预测模型,采用受试者工作特征曲线评估模型性能。
两组患者在性别、糖类抗原199表达、肿瘤厚度、Lauren分型和Borrmann分型方面差异有统计学意义(均P<0.05)。在能谱参数方面,两组在动脉期的单能量值(CT60-CT110 keV)差异有统计学意义(均P<0.05),在门静脉期除CT80 keV外的CT值、碘剂组值、标准化碘剂组值和单能量值差异有统计学意义(均P<0.05)。通过影像组学分析筛选出曲线下面积最大的支持向量机模型,其曲线下面积、灵敏度、特异度、准确率、P值及参数分别为0.843、0.923、0.714、0.925、P<0.001和c:g 2.64:10.56。最后,基于逻辑回归算法建立了临床模型、能谱CT模型、影像模型、临床+能谱模型、临床+影像模型、能谱+影像模型及临床+能谱+影像模型,其中临床+能谱+影像模型诊断胃癌神经侵犯的效能最佳。其曲线下面积、最佳阈值、约登指数、灵敏度及特异度分别为0.927(95%CI:0.850-1.000)、0.879、0.778、0.778和1.000。
基于临床特征、光谱CT参数及影像数据的联合模型对胃癌神经侵犯的术前预测具有良好价值。