根据患者的照射图像自动诊断肺部疾病(肺炎、癌症)并给出可靠的诊断结果

Kartlos Kachiashvili, J. K. Kachiashvili, V.V. Kvaratskhelia
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引用次数: 0

摘要

文章根据辐射照射获得的图像,提出了自动诊断人类肺部疾病肺炎和癌症的算法,使我们能够以必要的可靠性做出决策,即把可能出错的概率限制在预先计划的水平。由于从观测中获得的信息是随机的,因此在做出决策时使用了沃尔德序列分析法和统计假设检验的受限贝叶斯法(CBM),这两种方法都能限制可能出现的两种错误。我们利用统计模拟和真实数据对这两种方法进行了研究,结果充分证实了理论推理的正确性,以及利用人工智能做出所需的可靠决策的能力。与沃尔德方法相比,CBM 方法的优势体现在相对较少的观测结果就能做出具有相同可靠性的决策。此外,还说明了在现代计算机化 X 射线设备中实施所建议方法的可能性,因为这种方法既简单又能迅速做出决策。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Diagnosis of Lung Diseases (Pneumonia, Cancer) with given Reliabilities on the Basis of an Irradiation Images of Patients
The article proposes algorithms for the automatic diagnosis of human lung diseases pneumonia and cancer, based on images obtained by radiation irradiation, which allow us to make decisions with the necessary reliability, that is, to restrict the probabilities of making possible errors to a pre-planned level. Since the information obtained from the observation is random, Wald’s sequential analysis method and Constrained Bayesian Method (CBM) of statistical hypothesis testing are used for making a decision, which allow us to restrict both types of possible errors. Both methods have been investigated using statistical simulation and real data, which fully confirmed the correctness of theoretical reasoning and the ability to make decisions with the required reliability using artificial intelligence. The advantage of CBM compared to Wald’s method is shown, which is expressed in the relative scarcity of observation results needed to make a decision with the same reliability. The possibility of implementing the proposed method in modern computerized X-ray equipment due to its simplicity and promptness of decision-making is also shown.
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