Keller T, Bitterlich N, Hilfenhaus S, Bigl H, Löser T, Leonhardt P
Städtische Klinik Leipzig West, Robert-Koch-Klinik, Germany.
J Cancer Res Clin Oncol. 1998;124(10):565-74. doi: 10.1007/s004320050216.
The diagnosis of lung cancer and early knowledge of its histological type are very important; however, this is still a difficult subject for the physician. The aim of this study was to improve the diagnostic efficiency of tumour markers in the diagnosis of bronchial carcinoma by mathematical evaluation of a tumour marker profile employing fuzzy logic modeling. A panel of five tumour markers, including CYFRA 21-1, CEA, NSE, and five additional parameters was determined in 281 patients with confirmed primary diagnosis of bronchial carcinoma of different histology and stage. A further 131 persons, who had acute and chronic benign lung diseases, served as a control group. A classificator was developed using a fuzzy-logic rule-based system. The diagnostic value of the combined tumour markers was significantly better than that of the individual markers and of a combination of CYFRA 21-1, CEA, and NSE. The discrimination of malignant vs benign diseases was realized with a sensitivity of 87.5% and specificity of 85.5%. The rate of correct classification of small-cell vs non-small-cell lung carcinoma was 90.6% and 91.1%, respectively; for squamous cell carcinoma vs adenocarcinoma it was 76.8% and 78.8%, respectively. Our detailed analysis has shown that the fuzzy logic system improves diagnostic accuracy up to a rate of 20%, especially in early stages and in patients with all marker levels in the grey area. Our concept proved to be more powerful than measurement of single markers or the combination of CEA, CYFRA 21-1, and NSE. Its use may help in distinguishing between malignant and benign disease and make it possible to define different subgroups of patients earlier in the course of their disease.
肺癌的诊断及其组织学类型的早期知晓非常重要;然而,这对医生来说仍是一个难题。本研究的目的是通过采用模糊逻辑建模对肿瘤标志物谱进行数学评估,提高肿瘤标志物在支气管癌诊断中的诊断效率。在281例确诊为不同组织学类型和分期的原发性支气管癌患者中,测定了包括细胞角蛋白19片段(CYFRA 21-1)、癌胚抗原(CEA)、神经元特异性烯醇化酶(NSE)在内的一组五种肿瘤标志物以及另外五个参数。另外131例患有急慢性良性肺病的人作为对照组。使用基于模糊逻辑规则的系统开发了一个分类器。联合肿瘤标志物的诊断价值明显优于单个标志物以及CYFRA 21-1、CEA和NSE的组合。区分恶性与良性疾病的敏感性为87.5%,特异性为85.5%。小细胞肺癌与非小细胞肺癌的正确分类率分别为90.6%和91.1%;鳞状细胞癌与腺癌的正确分类率分别为76.8%和78.8%。我们的详细分析表明,模糊逻辑系统可将诊断准确率提高至20%,尤其是在早期阶段以及所有标志物水平处于灰色区域的患者中。我们的概念被证明比单个标志物测量或CEA、CYFRA 21-1和NSE的组合更有效。其应用可能有助于区分恶性和良性疾病,并有可能在疾病进程的早期确定不同的患者亚组。