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Hybrid Pattern Recognition Algorithms with the Statistical Model Applied to the Computer-Aided Medical Diagnosis

机译:统计模型的混合模式识别算法在计算机辅助医学诊断中的应用

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The present paper is devoted to the pattern recognition procedures that simultaneously use the information contained in the empirical data (learning set) and the set of expert rules with imprecisely formulated weights understood as conditional probabilities. Adopting the probabilistic model the combined and unified recognition algorithms are derived. In the first approach algorithm is based simply on the both set of data, in the second however, one set of data is transformed into the second one. Proposed algorithms were applied practically to the diagnosis of acute renal failure in children. Obtained results have proved its effectiveness in the computer medical decision-making.
机译:本文致力于模式识别程序,该程序同时使用经验数据(学习集)和专家规则集中包含的信息,并以不精确公式化的权重将其理解为条件概率。采用概率模型,推导了组合识别算法。在第一种方法中,算法仅基于两组数据,但是在第二种方法中,一组数据被转换为第二组数据。拟议的算法被实际应用于儿童急性肾衰竭的诊断。取得的成果证明了其在计算机医学决策中的有效性。

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