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首页> 外文期刊>Japanese journal of clinical oncology. >The use of artificial neural network analysis to improve the predictive accuracy of prostate biopsy in the Japanese population.
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The use of artificial neural network analysis to improve the predictive accuracy of prostate biopsy in the Japanese population.

机译:使用人工神经网络分析来提高日本人群前列腺穿刺活检的预测准确性。

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OBJECTIVE: We examined the efficacy of an artificial neural network analysis (ANNA) based on parameters available from previously existing examinations for improving the predictive accuracy of prostate cancer screening in the Japanese population. METHODS: Two hundred and twenty-eight patients with prostate-specific antigen (PSA) of 2-10 ng/ml were enrolled in this study. Two artificial neural network analysis (ANNA) models were constructed: ANNA1 with patient age, total PSA, free to total PSA ratio, prostate volume, transition zone volume (TZ), PSA density (PSAD) and PSA-TZ density (PSATZ) as input variables, and ANNA2 with presumed circle area ratio (PCAR), digital rectal examination (DRE) findings and chief complaint added as variables. The predictive accuracies of the ANNA models were compared with conventional PSA and volume-related parameters and a logistic regression (LR) model by receiver operating characteristic (ROC) curve analysis. RESULTS: Of 228 patients, 58 (25.5%) were diagnosed with prostate cancer. While ANNA2 had a slightly larger area under the curve (AUC) than ANNA1 (0.782 versus 0.793, P = 0.8477), the AUC of ANNA2 was significantly greater than those of ln(PSA), PSAD, PSATZ and free to total PSA ratio (P = 0.0004, 0.0230, 0.0304, and 0.0037, respectively). The accuracy of ANNA2 was significantly better than that of LR analysis at 90 and 95% sensitivity levels (P = 0.0051 and P < 0.0001, respectively). At 95% sensitivity level, ANNA2 reduced unnecessary biopsies by 40.0% with a negative predictive value of 95.7%. CONCLUSIONS: To determine the indication of prostate biopsy for PSA value in the range of 2-10 ng/ml, the ANNA model has the possibility to reduce unnecessary biopsies without missing many cases of cancers.
机译:目的:我们基于先前现有的检查中提供的参数,研究了人工神经网络分析(ANNA)的功效,以提高日本人群前列腺癌筛查的预测准确性。方法:228例前列腺特异性抗原(PSA)为2-10 ng / ml的患者入选本研究。构建了两个人工神经网络分析(ANNA)模型:以患者年龄,总PSA,自由与总PSA之比,前列腺体积,过渡区体积(TZ),PSA密度(PSAD)和PSA-TZ密度(PSATZ)为基础的ANNA1输入变量,并添加ANNA2(带有假定的圆环面积比(PCAR),直肠指检(DRE)和主诉)作为变量。通过接收器工作特性(ROC)曲线分析,将ANNA模型的预测准确性与常规PSA和体积相关参数以及逻辑回归(LR)模型进行了比较。结果:在228例患者中,有58例(25.5%)被诊断出患有前列腺癌。虽然ANNA2的曲线下面积(AUC)比ANNA1略大(0.782对0.793,P = 0.8477),但ANNA2的AUC显着大于ln(PSA),PSAD,PSATZ的AUC,并且自由总PSA比( P分别为0.0004、0.0230、0.0304和0.0037)。在90%和95%的灵敏度水平下,ANNA2的准确性明显优于LR分析(分别为P = 0.0051和P <0.0001)。在95%的敏感性水平下,ANNA2将不必要的活检减少了40.0%,阴性预测值为95.7%。结论:为了确定PSA值在2-10 ng / ml范围内的前列腺活检的适应症,ANNA模型有可能减少不必要的活检而不会遗漏许多癌症病例。

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