创新诊断工具:用于早期检测慢性腹泻儿科患者脂肪吸收不良的卷积神经网络

IF 0.4 4区 医学 Q4 PEDIATRICS Iranian Journal of Pediatrics Pub Date : 2024-03-24 DOI:10.5812/ijp-142789
Emre Kıymık, Erkan Kıymık, Ahmet Basturk
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引用次数: 0

摘要

背景:儿童慢性腹泻是一项重大的临床挑战,可导致不良的健康后果。在各种病因中,脂肪吸收不良尤其令人担忧,因为它可能导致营养吸收不足、营养不良和发育受损。及时准确的诊断对于实施有效治疗至关重要。研究目的本研究的目标是利用深度学习来创建一种超越传统方法的卓越诊断工具,从而帮助患有慢性腹泻的儿童及早发现脂肪吸收不良。研究方法在一项涉及 100 名儿科患者的初步研究中,对 25 种机器学习算法进行了评估。卷积神经网络(CNN)被认为是最有效的,随后通过超参数调整对其进行了改进。结果:卷积神经网络模型表现出卓越的性能,测试准确率达到 97%,曲线下面积 (AUC) 得分达到 99.4%。这些结果凸显了该模型在准确识别脂肪吸收不良病例方面的可靠性。结论这项研究是儿科胃肠病学领域值得关注的进展,它将深度学习技术与医学专业知识相结合,开发出一种可靠、快速的诊断工具。这种创新方法有望显著改善脂肪吸收不良的检测,从而改变临床实践,提高慢性腹泻患儿的治疗效果。
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Innovative Diagnostic Tool: Convolutional Neural Network for Early Fat Malabsorption Detection in Pediatric Patients with Chronic Diarrhea
Background: Chronic diarrhea in children poses a significant clinical challenge and can lead to adverse health outcomes. Among various causes, fat malabsorption is particularly concerning, as it may lead to inadequate nutrient absorption, malnutrition, and impaired growth. Prompt and precise diagnosis is crucial for implementing effective treatments. Objectives: The goal of this study is to utilize deep learning to create a superior diagnostic tool that exceeds traditional methods, facilitating the early identification of fat malabsorption in children suffering from chronic diarrhea. Methods: In a preliminary study involving 100 pediatric patients, 25 machine learning algorithms were evaluated. The convolutional neural network (CNN) was identified as the most effective and subsequently refined through hyperparameter tuning. Results: The CNN model exhibited exceptional performance, attaining a test accuracy of 97% and an area under the curve (AUC) score of 99.4%. These results underscore its reliability in accurately identifying cases of fat malabsorption. Conclusions: This research represents noteworthy progress in pediatric gastroenterology, merging deep learning techniques with medical expertise to develop a dependable and rapid diagnostic tool. This innovative method promises significant improvements in detecting fat malabsorption, potentially transforming clinical practices and enhancing patient outcomes in children with chronic diarrhea.
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来源期刊
CiteScore
0.90
自引率
20.00%
发文量
75
审稿时长
6-12 weeks
期刊介绍: Iranian Journal of Pediatrics (Iran J Pediatr) is a peer-reviewed medical publication. The purpose of Iran J Pediatr is to increase knowledge, stimulate research in all fields of Pediatrics, and promote better management of pediatric patients. To achieve the goals, the journal publishes basic, biomedical, and clinical investigations on prevalent diseases relevant to pediatrics. The acceptance criteria for all papers are the quality and originality of the research and their significance to our readership. Except where otherwise stated, manuscripts are peer-reviewed by minimum three anonymous reviewers. The Editorial Board reserves the right to refuse any material for publication and advises that authors should retain copies of submitted manuscripts and correspondence as the material cannot be returned. Final acceptance or rejection rests with the Editors.
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