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Evaluation of the efficiency of biofield diagnostic system in breast cancer detection using clinical study results and classifiers.

机译:使用临床研究结果和分类器评估生物场诊断系统在乳腺癌检测中的效率。

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The division of breast cancer cells results in regions of electrical depolarisation within the breast. These regions extend to the skin surface from where diagnostic information can be obtained through measurements of the skin surface electropotentials using sensors. This technique is used by the Biofield Diagnostic System (BDS) to detect the presence of malignancy. This paper evaluates the efficiency of BDS in breast cancer detection and also evaluates the use of classifiers for improving the accuracy of BDS. 182 women scheduled for either mammography or ultrasound or both tests participated in the BDS clinical study conducted at Tan Tock Seng hospital, Singapore. Using the BDS index obtained from the BDS examination and the level of suspicion score obtained from mammography/ultrasound results, the final BDS result was deciphered. BDS demonstrated high values for sensitivity (96.23%), specificity (93.80%), and accuracy (94.51%). Also, we have studied the performance of five supervised learning based classifiers (back propagation network, probabilistic neural network, linear discriminant analysis, support vector machines, and a fuzzy classifier), by feeding selected features from the collected dataset. The clinical study results show that BDS can help physicians to differentiate benign and malignant breast lesions, and thereby, aid in making better biopsy recommendations.
机译:乳腺癌细胞的分裂导致乳房内的电去极化区域。这些区域延伸到皮肤表面,通过使用传感器对皮肤表面电势进行测量,可以从那里获得诊断信息。 Biofield Diagnostic System(BDS)使用此技术来检测恶性肿瘤的存在。本文评估了BDS在乳腺癌检测中的效率,还评估了使用分类器提高BDS的准确性。计划进行乳房X线检查或超声检查或两项检查的182名妇女参加了在新加坡陈笃生医院进行的BDS临床研究。使用从BDS检查获得的BDS指数和从乳腺X线照片/超声检查结果获得的怀疑评分水平,对最终的BDS结果进行解密。 BDS的敏感性(96.23%),特异性(93.80%)和准确性(94.51%)很高。此外,我们还通过提供从收集的数据集中选择的特征,研究了五个基于监督学习的分类器(反向传播网络,概率神经网络,线性判别分析,支持向量机和模糊分类器)的性能。临床研究结果表明,BDS可以帮助医生区分乳腺良性和恶性病变,从而有助于提出更好的活检建议。

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