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Similarity classifier using similarity measure derived from Yu's norms in classification of medical data sets.

机译:在医学数据集分类中使用从Yu规范得出的相似性度量的相似性分类器。

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A new approach using a similarity measure based on Yu's norms is presented for the detection of erythemato-squamous diseases, diabetes, breast cancer, lung cancer and lymphography. The domain contains records of patients with known diagnoses. The results are very promising with all data sets and (in conclusion, can be drawn that) a similarity model derived from Yu's norms could be used for the diagnosis of patients taking into consideration the error rate. A similarity classifier derived from Yu's norms was used to detect the six erythemato-squamous diseases when 34 features defining six disease indications were used as inputs. The results confirmed that the proposed model has potential in detecting the erythemato-squamous diseases. The similarity model derived from Yu's norms achieved an accuracy rate (97.8%) which was higher than that of the stand-alone neural network model or the ANFIS model suggested in Ubeyli and Guler [Automatic detection of erythemato-squamous diseases using adaptive neuro-fuzzyinference systems, Comput. Biol. Med. 35 (2005) 421-433] or the similarity model based on Lukasiewicz similarity [Luukka and Leppalampi, Similarity classifier with generalized mean applied to medical data, Comput. Biol. Med. 36 (2006) 1026-1040]. With PIMA Indian diabetes, the detection model has an error rate of about 24% which is much better than the overall rate of 33% for diabetes. Also, a classifier was applied to the lung cancer data set and the results were to my knowledge better than before. When the lung cancer data were preprocessed with an entropy minimization technique and the classifier with similarity based on Yu's norm was applied, 99.99% accuracy was achieved. The use of this preprocessing method enhanced the results over 30%. In lymphography, entropy minimization also enhanced the results remarkably and 86.2% accuracy was achieved.
机译:提出了一种基于Yu规范的相似性度量的新方法,用于检测红斑鳞状疾病,糖尿病,乳腺癌,肺癌和淋巴造影。该域包含具有已知诊断的患者的记录。所有数据集的结果都非常有前景,并且(可以得出结论)考虑到错误率,可以使用从Yu规范得出的相似性模型来诊断患者。当使用定义了六个疾病适应症的34个特征作为输入时,使用了从Yu的规范得出的相似性分类器来检测六种红斑鳞状疾病。结果证实了该模型具有检测红斑鳞状疾病的潜力。由Yu规范得出的相似度模型的准确率(97.8%)高于独立的神经网络模型或Ubeyli和Guler建议的ANFIS模型[使用自适应神经模糊推理自动检测红斑鳞状疾病系统,计算机。生物学中35(2005)421-433]或基于Lukasiewicz相似度的相似度模型[Luukka和Leppalampi,将相似性均值应用于医学数据的相似度分类器,计算。生物学中36(2006)1026-1040]。对于PIMA印度糖尿病,该检测模型的错误率约为24%,远好于糖尿病的总错误率33%。另外,将分类器应用于肺癌数据集,其结果据我所知比以前更好。当使用熵最小化技术对肺癌数据进行预处理,并应用基于Yu范数的相似度分类器时,可达到99.99%的准确性。使用这种预处理方法可使结果提高30%以上。在淋巴造影中,熵最小化也显着提高了结果,并且达到了86.2%的准确性。

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