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Diagnostic Feature Extraction on Osteoporosis Clinical Data Using Genetic Algorithms

机译:遗传算法诊断特征提取骨质疏松症临床资料

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A medical database of 589 women thought to have osteoporosis has been analyzed. A hybrid algorithm consisting of Artificial Neural Networks and Genetic Algorithms was used for the assessment of osteoporosis. Osteoporosis is a common disease, especially in women, and a timely and accurate diagnosis is important for avoiding fractures. In this paper, the 33 initial osteoporosis risk factors are reduced to only 2 risk factors by the proposed hybrid algorithm. That leads to faster data analysis procedures and more accurate diagnostic results. The proposed method may be used as a screening tool that assists surgeons in making an osteoporosis diagnosis.
机译:已经分析了589名妇女的医疗数据库,旨在进行骨质疏松症。一种由人工神经网络和遗传算法组成的混合算法用于评估骨质疏松症。骨质疏松症是一种常见的疾病,特别是在女性中,及时和准确的诊断对于避免骨折是重要的。本文通过提出的杂交算法减少了33项初始骨质疏松症风险因素仅减少了2个危险因素。这导致更快的数据分析程序和更准确的诊断结果。所提出的方法可以用作筛选工具,其有助于外科医生进行骨质疏松症诊断。

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