Vogele Daniel, Mueller Teresa, Wolf Daniel, Otto Stephanie, Manoj Sabitha, Goetz Michael, Ettrich Thomas J, Beer Meinrad
Department of Diagnostic and Interventional Radiology, Ulm University Medical Center, 89081 Ulm, Germany.
Visual Computing Group, Institute for Media Informatics, Ulm University, 89081 Ulm, Germany.
Diagnostics (Basel). 2024 Jan 16;14(2):198. doi: 10.3390/diagnostics14020198.
Sarcopenia is considered a negative prognostic factor in patients with malignant tumors. Among other diagnostic options, computed tomography (CT), which is repeatedly performed on tumor patients, can be of further benefit. The present study aims to establish a framework for classifying the impact of sarcopenia on the prognosis of patients diagnosed with esophageal or gastric cancer. Additionally, it explores the significance of CT radiomics in both diagnostic and prognostic methodologies.
CT scans of 83 patients with esophageal or gastric cancer taken at the time of diagnosis and during a follow-up period of one year were evaluated retrospectively. A total of 330 CT scans were analyzed. Seventy three of these patients received operative tumor resection after neoadjuvant chemotherapy, and 74% of the patients were male. The mean age was 64 years (31-83 years). Three time points (t) were defined as a basis for the statistical analysis in order to structure the course of the disease: t1 = initial diagnosis, t2 = following (neoadjuvant) chemotherapy and t3 = end of the first year after surgery in the "surgery" group or end of the first year after chemotherapy. Sarcopenia was determined using the psoas muscle index (PMI). The additional analysis included the analysis of selected radiomic features of the psoas major, quadratus lumborum, and erector spinae muscles at the L3 level. Disease progression was monitored according to the response evaluation criteria in solid tumors (RECIST 1.1). CT scans and radiomics were used to assess the likelihood of tumor progression and their correlation to sarcopenia. For machine learning, the established algorithms decision tree (DT), K-nearest neighbor (KNN), and random forest (RF) were applied. To evaluate the performance of each model, a 10-fold cross-validation as well as a calculation of Accuracy and Area Under the Curve (AUC) was used.
During the observation period of the study, there was a significant decrease in PMI. This was most evident in patients with surgical therapy in the comparison between diagnosis and after both neoadjuvant therapy and surgery (each < 0.001). Tumor progression (PD) was not observed significantly more often in the patients with sarcopenia compared to those without sarcopenia at any time point ( = 0.277 to = 0.465). On average, PD occurred after 271.69 ± 104.20 days. The time from initial diagnosis to PD in patients "with sarcopenia" was not significantly shorter than in patients "without sarcopenia" at any of the time points ( = 0.521 to = 0.817). The CT radiomics of skeletal muscle could predict both sarcopenia and tumor progression, with the best results for the psoas major muscle using the RF algorithm. For the detection of sarcopenia, the Accuracy was 0.90 ± 0.03 and AUC was 0.96 ± 0.02. For the prediction of PD, the Accuracy was 0.88 ± 0.04 and the AUC was 0.93 ± 0.04.
In the present study, the CT radiomics of skeletal muscle together with machine learning correlated with the presence of sarcopenia, and this can additionally assist in predicting disease progression. These features can be classified as promising alternatives to conventional methods, with great potential for further research and future clinical application. However, when sarcopenia was diagnosed with PMI, no significant correlation between sarcopenia and PD could be observed.
肌肉减少症被认为是恶性肿瘤患者的不良预后因素。在其他诊断方法中,对肿瘤患者反复进行的计算机断层扫描(CT)可能会有更多益处。本研究旨在建立一个框架,用于分类肌肉减少症对食管癌或胃癌患者预后的影响。此外,还探讨了CT影像组学在诊断和预后方法中的意义。
回顾性评估83例食管癌或胃癌患者在诊断时及随访一年期间的CT扫描。共分析了330次CT扫描。其中73例患者在新辅助化疗后接受了肿瘤切除术,74%的患者为男性。平均年龄为64岁(31 - 83岁)。定义了三个时间点(t)作为统计分析的基础,以构建疾病进程:t1 = 初始诊断,t2 = 后续(新辅助)化疗后,t3 = “手术”组术后第一年结束或化疗后第一年结束。使用腰大肌指数(PMI)确定肌肉减少症。额外的分析包括对L3水平腰大肌、腰方肌和竖脊肌的选定影像组学特征的分析。根据实体瘤疗效评价标准(RECIST 1.1)监测疾病进展。使用CT扫描和影像组学评估肿瘤进展的可能性及其与肌肉减少症的相关性。对于机器学习,应用了已建立的算法决策树(DT)、K近邻(KNN)和随机森林(RF)。为评估每个模型的性能,使用了10折交叉验证以及准确率和曲线下面积(AUC)的计算。
在研究观察期内,PMI显著下降。在手术治疗患者中,从诊断到新辅助治疗及手术后的比较中最为明显(均 < 0.001)。在任何时间点,与无肌肉减少症的患者相比,肌肉减少症患者未观察到肿瘤进展(PD)显著更频繁(P = 0.277至P = 0.465)。平均而言,PD发生在271.69 ± 104.20天之后。在任何时间点,“有肌肉减少症”患者从初始诊断到PD的时间均不比“无肌肉减少症”患者显著更短(P = 0.521至P = 0.817)。骨骼肌的CT影像组学可以预测肌肉减少症和肿瘤进展,使用RF算法对腰大肌的预测效果最佳。对于肌肉减少症的检测,准确率为0.90 ± 0.03,AUC为0.96 ± 0.02。对于PD的预测,准确率为0.88 ± 0.04,AUC为0.93 ± 0.04。
在本研究中,骨骼肌的CT影像组学与机器学习相结合与肌肉减少症的存在相关,并且这可以额外辅助预测疾病进展。这些特征可被归类为传统方法的有前景的替代方法,具有进一步研究和未来临床应用的巨大潜力。然而,当用PMI诊断肌肉减少症时,未观察到肌肉减少症与PD之间存在显著相关性。