An artificial neural network approach to diagnose and predict liver dysfunction and failure in the critical care setting.

IF 0.3 4区 医学 Q3 MEDICINE, GENERAL & INTERNAL Hippokratia Pub Date : 2024-01-01
S Pappada, B Sathelly, J Schmieder, A Javaid, M Owais, B Cameron, S Khuder, G Kostopanagiotou, R Smith, T Sparkle, T Papadimos
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Abstract

Background: Detecting liver dysfunction/failure in the intensive care unit poses a challenge as individuals afflicted with these conditions often appear symptom-free, thereby complicating early diagnoses and contributing to unfavorable patient outcomes. The objective of this endeavor was to improve the chances of early diagnosis of liver dysfunction/failure by creating a predictive model for the critical care setting. This model has been designed to produce an index that reflects the probability of severe liver dysfunction/failure for patients in intensive care units, utilizing machine learning techniques.

Materials and methods: This effort used comprehensive open-access patient databases to build and validate machine learning-based models for predicting the likelihood of severe liver dysfunction/failure. Two artificial neural network model architectures that derived a novel 0-100 Liver Failure Risk Index were developed and validated using the comprehensive patient databases. Data used to train and develop the models included clinical (patient vital signs) and laboratory results related to liver function which included liver function test results. The performance of the developed models was compared in terms of sensitivity, specificity, and the mean lead time to diagnosis.

Results: The best model performance demonstrated an 83.3 % sensitivity and a specificity of 77.5 % in diagnosing severe liver dysfunction/failure. This model accurately identified these patients a median of 17.5 hours before their clinical diagnosis, as documented in their electronic health records. The predictive diagnostic capability of the developed models is crucial to the intensive care unit setting, where treatment and preventative interventions can be made to avoid severe liver dysfunction/failure.

Conclusion: Our machine learning approach facilitates early and timely intervention in the hepatic function of critically ill patients by their healthcare providers to prevent or minimize associated morbidity and mortality. HIPPOKRATIA 2024, 28 (1):1-10.

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在重症监护环境中诊断和预测肝功能障碍和衰竭的人工神经网络方法。
背景:在重症监护病房检测肝功能异常/肝衰竭是一项挑战,因为肝功能异常/肝衰竭患者往往没有任何症状,从而使早期诊断复杂化,并导致不利的患者预后。这项工作的目的是通过创建重症监护环境下的预测模型,提高肝功能异常/衰竭的早期诊断几率。该模型旨在利用机器学习技术生成一个指数,反映重症监护病房患者出现严重肝功能异常/衰竭的概率:这项工作利用全面开放的患者数据库来建立和验证基于机器学习的模型,以预测严重肝功能异常/衰竭的可能性。利用全面的患者数据库开发并验证了两个人工神经网络模型架构,该模型可得出新的 0-100 肝功能衰竭风险指数。用于训练和开发模型的数据包括与肝功能相关的临床(患者生命体征)和实验室结果,其中包括肝功能检测结果。从灵敏度、特异性和平均诊断准备时间等方面对所开发模型的性能进行了比较:结果:最佳模型在诊断严重肝功能异常/衰竭方面的灵敏度为 83.3%,特异度为 77.5%。根据患者电子病历的记录,该模型可在临床诊断前 17.5 小时准确识别出这些患者。所开发模型的预测诊断能力对于重症监护病房环境至关重要,在重症监护病房环境中,可以采取治疗和预防性干预措施来避免严重肝功能障碍/衰竭:结论:我们的机器学习方法有助于医护人员对重症患者的肝功能进行早期和及时干预,以预防或最大限度地降低相关的发病率和死亡率。Hippokratia 2024, 28 (1):1-10.
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来源期刊
Hippokratia
Hippokratia MEDICINE, GENERAL & INTERNAL-
CiteScore
1.10
自引率
0.00%
发文量
0
审稿时长
6-12 weeks
期刊介绍: Hippokratia journal is a quarterly issued, open access, peer reviewed, general medical journal, published in Thessaloniki, Greece. It is a forum for all medical specialties. The journal is published continuously since 1997, its official language is English and all submitted manuscripts undergo peer review by two independent reviewers, assigned by the Editor (double blinded review process). Hippokratia journal is managed by its Editorial Board and has an International Advisory Committee and over 500 expert Reviewers covering all medical specialties and additionally Technical Reviewers, Statisticians, Image processing Experts and a journal Secretary. The Society “Friends of Hippokratia Journal” has the financial management of both the printed and electronic edition of the journal.
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