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Predictive value and modeling analysis of MSCT signs in gastrointestinal stromal tumors (GISTs) to pathological risk degree

机译:胃肠道间质瘤(GIST)中MSCT征象对病理危险度的预测价值和模型分析

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OBJECTIVE: By analyzing MSCT (multi-slice computed tomography) signs with different risks in gastrointestinal stromal tumors, this paper aimed to discuss the predictive value and modeling analysis of MSCT signs in GISTs (gastrointestinal stromal tumor) to pathological risk degree. PATIENTS AND METHODS: 100 cases of primary GISTs with abdominal and pelvic MSCT scan were involved in this study. All MSCT scan findings and enhanced findings were analyzed and compared among cases with different risk degree of pathology. Then GISTs diagnostic model was established by using support vector machine (SVM) algorithm, and its diagnostic value was evaluated as well. RESULTS: All lesions were solitary, among which there were 46 low-risk cases, 24 medium-risk cases and 30 high-risk cases. For all high-risk, medium-risk and low-risk GISTs, there were statistical differences in tumor growth pattern, size, shape, fat space, with or without calcification, ulcer, enhancement method and peritumoral and intratumoral vessels (p0.05). The apparent difference lied in plain scan, arterial phase and venous phase for each risk degree. The diagnostic accuracy of SVM diagnostic model established with 10 imaging features as indexes was 70.0%, and it was especially reliable when diagnosing GISTs of high or low risk. CONCLUSIONS: Preoperative analysis of MSCT features is clinically significant for its diagnosis of risk degree and prognosis; GISTs diagnostic model established on the basis of SVM possesses high diagnostic value.
机译:目的:通过分析胃肠道间质瘤中具有不同风险的MSCT征象,探讨胃肠道间质瘤中MSCT征象对病理危险度的预测价值和模型分析。患者与方法:本研究涉及100例腹部和盆腔MSCT扫描的原发性GIST。所有MSCT扫描结果和增强结果均经过分析,并在具有不同病理风险等级的病例之间进行了比较。利用支持向量机(SVM)算法建立了GIST的诊断模型,并对其诊断价值进行了评估。结果:所有病变均为孤立性,其中低危46例,中危24例,高危30例。对于所有高危,中危和低危GIST,在有无钙化,溃疡,增生方法以及瘤周围和瘤内血管的肿瘤生长方式,大小,形状,脂肪空间,统计学上存在统计学差异(p0.05) 。对于每个危险度,明显的差异在于平扫,动脉期和静脉期。以10个影像学特征为指标建立的SVM诊断模型的诊断准确性为70.0%,在诊断高危或低危GIST时特别可靠。结论:术前分析MSCT特征对于其风险程度和预后的诊断具有临床意义。基于支持向量机建立的GIST诊断模型具有较高的诊断价值。

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