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首页> 外文期刊>Annals of nuclear medicine >Investigation of computer-aided diagnosis system for bone scans: A retrospective analysis in 406 patients
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Investigation of computer-aided diagnosis system for bone scans: A retrospective analysis in 406 patients

机译:骨扫描计算机辅助诊断系统研究:406例患者的回顾性分析

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Objective: The aim of this study was to investigate the diagnostic ability of a completely automated computer-assisted diagnosis (CAD) system to detect metastases in bone scans by two patterns: one was per region, and the other was per patient. Materials and methods: This study included 406 patients with suspected metastatic bone tumors who underwent whole-body bone scans that were analyzed by the automated CAD system. The patients were divided into four groups: a group with prostatic cancer (N = 71), breast cancer (N = 109), males with other cancers (N = 153), and females with other cancers (N = 73). We investigated the bone scan index and artificial neural network (ANN), which are parameters that can be used to classify bone scans to determine whether there are metastases. The sensitivities, specificities, positive predictive value (PPV), negative predictive value (NPV), and accuracies for the four groups were compared. Receiver operating characteristic (ROC) analyses of region-based ANN were performed to compare the diagnostic performance of the automated CAD system. Results: There were no significant differences in the sensitivity, specificity, or NPV between the four groups. The PPVs of the group with prostatic cancer (51.0 %) were significantly higher than those of the other groups (P < 0.01). The accuracy of the group with prostatic cancer (81.5 %) was significantly higher than that of the group with breast cancer (68.6 %) and the females with other cancers (65.9 %) (P < 0.01). For the evaluation of the ROC analysis of region-based ANN, the highest Az values for the groups with prostatic cancer, breast cancer, males with other cancers, and females with other cancers were 0.82 (ANN = 0.4, 0.5, 0.6, 0.7, and 0.8), 0.83 (ANN = 0.7), 0.81 (ANN = 0.5), and 0.81 (ANN = 0.6), respectively. Conclusion: The special CAD system "BONENAVI" trained with a Japanese database appears to have significant potential in assisting physicians in their clinical routine. However, an improved CAD system depending on the primary lesion of the cancer is required to decrease the proportion of false-positive findings.
机译:目的:本研究的目的是研究一种全自动计算机辅助诊断(CAD)系统通过两种方式检测骨扫描中转移灶的诊断能力:一种是每个区域,另一种是每个患者。材料和方法:这项研究包括406例疑似转移性骨肿瘤的患者,他们接受了全身骨扫描,并通过自动CAD系统进行了分析。将患者分为四组:一组患有前列腺癌(N = 71),乳腺癌(N = 109),男性患有其他癌症(N = 153)和女性患有其他癌症(N = 73)。我们研究了骨扫描指数和人工神经网络(ANN),它们是可用于对骨扫描进行分类以确定是否存在转移的参数。比较了四组的敏感性,特异性,阳性预测值(PPV),阴性预测值(NPV)和准确性。进行了基于区域的人工神经网络的接收器运行特征(ROC)分析,以比较自动CAD系统的诊断性能。结果:四组之间的敏感性,特异性或NPV没有显着差异。前列腺癌组的PPV(51.0%)显着高于其他组(P <0.01)。前列腺癌组的准确率(81.5%)显着高于乳腺癌组(68.6%)和女性的其他癌症组(65.9%)(P <0.01)。为了评估基于区域的ANN的ROC分析,前列腺癌,乳腺癌,患有其他癌症的男性和患有其他癌症的女性的最高Az值为0.82(ANN = 0.4、0.5、0.6、0.7,和0.8),0.83(ANN = 0.7),0.81(ANN = 0.5)和0.81(ANN = 0.6)。结论:经过日本数据库培训的专用CAD系统“ BONENAVI”似乎在协助医生进行临床工作方面具有巨大潜力。但是,需要根据癌症的原发灶来改进的CAD系统,以减少假阳性结果的比例。

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