首页> 外文会议>Evolutionary Computation, 2000. Proceedings of the 2000 Congress on >Application of a new evolutionary programming/adaptive boosting hybrid to breast cancer diagnosis
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Application of a new evolutionary programming/adaptive boosting hybrid to breast cancer diagnosis

机译:新型进化规划/自适应增强杂交技术在乳腺癌诊断中的应用

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A new evolutionary programming/adaptive boosting (EP/AB) neural network hybrid was investigated to measure the hybrid performance improvement as obtained when using an EP-only derived neural network as a baseline. By combining input variables consisting of mammography lesion descriptors and patient history data, the hybrid predicted whether the lesion was benign or malignant, which may aid in reducing the number of unnecessary biopsies and thus the cost of mammography screening of breast cancer. The EP process as well as the hybrid was optimized using a data set of 500 biopsy-proven cases from Duke University Medical Center (USA). Results showed that the hybrid provided a 15-20% classification performance improvement as measured by the ROC Az index when compared to a non-optimized EP derived architecture.
机译:研究了一种新的进化编程/自适应升压(EP / AB)神经网络杂种,以测量使用EP-oc衍生的神经网络作为基线时获得的混合性能改进。通过组合由乳房摄影病变描述符和患者历史数据组成的输入变量,杂种预测病变是良性还是恶性,这可能有助于减少不必要的活检的数量,从而有助于乳腺癌乳腺癌筛选的成本。使用Duke University Medical Center(USA)的500个活检证明案件的数据集进行了优化了EP过程以及杂种。结果表明,与未优化的EP衍生架构相比,杂交机提供了15-20%的分类性能改进,如Roc Az指数测量。

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