针对儿科代谢疾病的可解释预测深度学习平台。

IF 4.7 2区 医学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Hamed Javidi, Arshiya Mariam, Lina Alkhaled, Kevin M Pantalone, Daniel M Rotroff
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引用次数: 0

摘要

目的:儿童代谢性疾病在全球范围内日益增多,容易引发一系列慢性并发症,严重影响生活质量。我们需要早期检测工具,以便及时干预,预防或减缓这些长期并发症的发展:目前,临床上还没有广泛使用的工具可以预测儿科患者代谢性疾病的发病。在此,我们使用可解释的深度学习,利用大型综合医疗系统电子健康记录数据中的纵向临床测量、人口数据和诊断代码,预测儿科队列中糖尿病前期、2 型糖尿病(T2D)和代谢综合征的发病情况:队列包括 49 517 名 2-18 岁的超重或肥胖儿童(54.9% 为男性,73% 为白种人),中位随访时间为 7.5 年,平均体重指数 (BMI) 百分位数为 88.6%。我们的模型在预测 T2D、代谢综合征和糖尿病前期方面的接收者工作特征曲线下面积(AUC)精确度分别高达 0.87、0.79 和 0.79。尽管大多数风险计算器只使用最近的数据,但与使用最新 BMI 的模型相比,采用纵向数据预测 T2D、代谢综合征和糖尿病前期的 AUC 分别提高了 13.04%、11.48% 和 11.67%(P 讨论):尽管大多数风险计算器只使用最近的数据,但纳入纵向数据可提高模型的准确性,因为利用轨迹可更全面地描述患者的健康史。我们的可解释模型显示,体重指数轨迹一直被认为是对预测最有影响的特征之一,这凸显了在有纵向数据的情况下纳入纵向数据的优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An interpretable predictive deep learning platform for pediatric metabolic diseases.

Objectives: Metabolic disease in children is increasing worldwide and predisposes a wide array of chronic comorbid conditions with severe impacts on quality of life. Tools for early detection are needed to promptly intervene to prevent or slow the development of these long-term complications.

Materials and methods: No clinically available tools are currently in widespread use that can predict the onset of metabolic diseases in pediatric patients. Here, we use interpretable deep learning, leveraging longitudinal clinical measurements, demographical data, and diagnosis codes from electronic health record data from a large integrated health system to predict the onset of prediabetes, type 2 diabetes (T2D), and metabolic syndrome in pediatric cohorts.

Results: The cohort included 49 517 children with overweight or obesity aged 2-18 (54.9% male, 73% Caucasian), with a median follow-up time of 7.5 years and mean body mass index (BMI) percentile of 88.6%. Our model demonstrated area under receiver operating characteristic curve (AUC) accuracies up to 0.87, 0.79, and 0.79 for predicting T2D, metabolic syndrome, and prediabetes, respectively. Whereas most risk calculators use only recently available data, incorporating longitudinal data improved AUCs by 13.04%, 11.48%, and 11.67% for T2D, syndrome, and prediabetes, respectively, versus models using the most recent BMI (P < 2.2 × 10-16).

Discussion: Despite most risk calculators using only the most recent data, incorporating longitudinal data improved the model accuracies because utilizing trajectories provides a more comprehensive characterization of the patient's health history. Our interpretable model indicated that BMI trajectories were consistently identified as one of the most influential features for prediction, highlighting the advantages of incorporating longitudinal data when available.

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来源期刊
Journal of the American Medical Informatics Association
Journal of the American Medical Informatics Association 医学-计算机:跨学科应用
CiteScore
14.50
自引率
7.80%
发文量
230
审稿时长
3-8 weeks
期刊介绍: JAMIA is AMIA''s premier peer-reviewed journal for biomedical and health informatics. Covering the full spectrum of activities in the field, JAMIA includes informatics articles in the areas of clinical care, clinical research, translational science, implementation science, imaging, education, consumer health, public health, and policy. JAMIA''s articles describe innovative informatics research and systems that help to advance biomedical science and to promote health. Case reports, perspectives and reviews also help readers stay connected with the most important informatics developments in implementation, policy and education.
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