An "All-Data-on-Hand" Deep Learning Model to Predict Hospitalization for Diabetic Ketoacidosis in Youth With Type 1 Diabetes: Development and Validation Study.

Q2 Medicine JMIR Diabetes Pub Date : 2023-07-18 DOI:10.2196/47592
David D Williams, Diana Ferro, Colin Mullaney, Lydia Skrabonja, Mitchell S Barnes, Susana R Patton, Brent Lockee, Erin M Tallon, Craig A Vandervelden, Cintya Schweisberger, Sanjeev Mehta, Ryan McDonough, Marcus Lind, Leonard D'Avolio, Mark A Clements
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Abstract

Background: Although prior research has identified multiple risk factors for diabetic ketoacidosis (DKA), clinicians continue to lack clinic-ready models to predict dangerous and costly episodes of DKA. We asked whether we could apply deep learning, specifically the use of a long short-term memory (LSTM) model, to accurately predict the 180-day risk of DKA-related hospitalization for youth with type 1 diabetes (T1D).

Objective: We aimed to describe the development of an LSTM model to predict the 180-day risk of DKA-related hospitalization for youth with T1D.

Methods: We used 17 consecutive calendar quarters of clinical data (January 10, 2016, to March 18, 2020) for 1745 youths aged 8 to 18 years with T1D from a pediatric diabetes clinic network in the Midwestern United States. The input data included demographics, discrete clinical observations (laboratory results, vital signs, anthropometric measures, diagnosis, and procedure codes), medications, visit counts by type of encounter, number of historic DKA episodes, number of days since last DKA admission, patient-reported outcomes (answers to clinic intake questions), and data features derived from diabetes- and nondiabetes-related clinical notes via natural language processing. We trained the model using input data from quarters 1 to 7 (n=1377), validated it using input from quarters 3 to 9 in a partial out-of-sample (OOS-P; n=1505) cohort, and further validated it in a full out-of-sample (OOS-F; n=354) cohort with input from quarters 10 to 15.

Results: DKA admissions occurred at a rate of 5% per 180-days in both out-of-sample cohorts. In the OOS-P and OOS-F cohorts, the median age was 13.7 (IQR 11.3-15.8) years and 13.1 (IQR 10.7-15.5) years; median glycated hemoglobin levels at enrollment were 8.6% (IQR 7.6%-9.8%) and 8.1% (IQR 6.9%-9.5%); recall was 33% (26/80) and 50% (9/18) for the top-ranked 5% of youth with T1D; and 14.15% (213/1505) and 12.7% (45/354) had prior DKA admissions (after the T1D diagnosis), respectively. For lists rank ordered by the probability of hospitalization, precision increased from 33% to 56% to 100% for positions 1 to 80, 1 to 25, and 1 to 10 in the OOS-P cohort and from 50% to 60% to 80% for positions 1 to 18, 1 to 10, and 1 to 5 in the OOS-F cohort, respectively.

Conclusions: The proposed LSTM model for predicting 180-day DKA-related hospitalization was valid in this sample. Future research should evaluate model validity in multiple populations and settings to account for health inequities that may be present in different segments of the population (eg, racially or socioeconomically diverse cohorts). Rank ordering youth by probability of DKA-related hospitalization will allow clinics to identify the most at-risk youth. The clinical implication of this is that clinics may then create and evaluate novel preventive interventions based on available resources.

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预测青年1型糖尿病酮症酸中毒住院的“全数据在手”深度学习模型:开发和验证研究
背景:虽然先前的研究已经确定了糖尿病酮症酸中毒(DKA)的多种危险因素,但临床医生仍然缺乏临床就绪的模型来预测危险和昂贵的DKA发作。我们询问我们是否可以应用深度学习,特别是使用长短期记忆(LSTM)模型,来准确预测青年1型糖尿病(T1D)患者与dka相关的180天住院风险。目的:我们旨在描述LSTM模型的发展,以预测青年T1D患者与dka相关的180天住院风险。方法:我们使用了17个连续季度的临床数据(2016年1月10日至2020年3月18日),来自美国中西部儿童糖尿病诊所网络的1745名8至18岁的T1D青少年。输入的数据包括人口统计、离散的临床观察(实验室结果、生命体征、人体测量、诊断和程序代码)、药物、就诊次数、历史DKA发作次数、自上次DKA入院以来的天数、患者报告的结果(对临床摄入问题的回答),以及通过自然语言处理从糖尿病和非糖尿病相关的临床记录中获得的数据特征。我们使用从第1季度到第7季度的输入数据(n=1377)来训练模型,使用从第3季度到第9季度的输入在部分样本外(OOS-P;n=1505)队列,并在全样本外(OOS-F;N =354)队列,输入从第10季度到第15季度。结果:在两个样本外队列中,DKA入院率为每180天5%。OOS-P组和OOS-F组的中位年龄分别为13.7 (IQR 11.3-15.8)岁和13.1 (IQR 10.7-15.5)岁;入组时糖化血红蛋白水平中位数为8.6% (IQR为7.6%-9.8%)和8.1% (IQR为6.9%-9.5%);排名前5%的青年T1D患者回忆率分别为33%(26/80)和50% (9/18);14.15%(213/1505)和12.7%(45/354)在T1D诊断后曾有DKA入院。对于按住院概率排序的列表,OOS-P队列中位置1至80、1至25和1至10的准确性分别从33%到56%提高到100%,OOS-F队列中位置1至18、1至10和1至5的准确性分别从50%到60%提高到80%。结论:提出的LSTM模型预测180天dka相关住院治疗在本样本中是有效的。未来的研究应评估模型在多种人群和环境中的有效性,以解释可能存在于不同人群(例如,种族或社会经济不同的队列)的卫生不公平现象。根据与dka相关的住院概率对青少年进行排序,将使诊所能够确定风险最大的青少年。这项研究的临床意义是,诊所可以根据现有资源创造和评估新的预防干预措施。
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来源期刊
JMIR Diabetes
JMIR Diabetes Computer Science-Computer Science Applications
CiteScore
4.00
自引率
0.00%
发文量
35
审稿时长
16 weeks
期刊最新文献
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