利用人工智能诊断新生儿疾病并预测其结果

N. V. Kharlamova, I. F. Yasinsky, M. A. Ananyeva, N. Shilova, S. B. Nazarov, E. A. Matveeva, A. V. Budalova, Yu. A. Ivanenkova
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引用次数: 0

摘要

近年来,包括神经网络在内的现代人工智能模型已经成功地引入临床实践,因为它们的功能具有很高的准确性,并且在各种疾病的诊断和预测中具有应用前景。目的。利用神经网络智能技术改进对新生儿疾病及其预后的预测和诊断过程。材料和方法。该研究基于统计可靠的患者病史数据收集,数学分析,模糊逻辑理论和可训练神经网络系统原理。结果。神经网络程序已被开发用于预测新生儿后氧缺乏症心血管系统疾病的进程;确定新生儿发生脑白质硬化、颅内出血、脑积水、坏死性小肠结肠炎、支气管肺发育不良、早产儿视网膜病变、早产儿早期贫血等重大疾病的概率及结局;预测儿童一岁前的生理和神经精神发育;同时也可以预测怀孕32周之前出生的孩子的不利结果(死亡或残疾,伴有持续的健康问题)。结论。开发的人工神经网络程序可用于新生儿(包括早产儿)的治疗和诊断过程和护理的人格化。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The use of artificial intelligence to diagnose diseases and predict their outcomes in newborns
   In recent years, modern models of artificial intelligence, including neural networks, have been successfully introduced into clinical practice, due to the high accuracy of functioning and the prospects of their use for the diagnosis and prediction of various diseases.   Purpose. To improve the processes of predicting and diagnosing diseases and their outcomes in newborns using neural network intelligent technologies.   Material and methods. The study is based on statistically reliable collection of patient history data, mathematical analysis, fuzzy logic theory and principles of trainable neural network systems.   Results. Neural network programs have been developed to predict the course of posthypoxic disorders of the cardiovascular system in newborns; to determine the probability of occurrence and outcomes in newborns of such significant diseases as cerebral leukomalacia, intracranial hemorrhages, hydrocephalus, necrotizing enterocolitis, bronchopulmonary dysplasia, retinopathy of prematurity, early anemia of prematurity; to predict the physical and neuropsychiatric development of a child to age of one year; and also to predict an unfavorable outcome (death or disability with persistent health problems) of children born earlier than 32 weeks of gestation.   Conclusion. The developed artificial neural network programs can be used for personification of the therapeutic and diagnostic process and nursing of newborns, including very preterm ones.
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