Suppr超能文献

一种用于妊娠期糖尿病的基于网络的临床决策支持系统:自动饮食处方及胰岛素需求检测

A web-based clinical decision support system for gestational diabetes: Automatic diet prescription and detection of insulin needs.

作者信息

Caballero-Ruiz Estefanía, García-Sáez Gema, Rigla Mercedes, Villaplana María, Pons Belen, Hernando M Elena

机构信息

Bioengineering and Telemedicine Group, Centro de Tecnología Biomédica, ETSI de Telecomunicación, Universidad Politécnica de Madrid, Avd. Complutense n°30, 28040, Madrid, Spain.

Endocrinology and Nutrition Department, Parc Tauli University Hospital, Institut Universitari Parc Taulí - Universitat Autònoma de Barcelona, Parc Taulí 1, 08208 Sabadell, Spain.

出版信息

Int J Med Inform. 2017 Jun;102:35-49. doi: 10.1016/j.ijmedinf.2017.02.014. Epub 2017 Mar 6.

Abstract

BACKGROUND

The growth of diabetes prevalence is causing an increasing demand in health care services which affects the clinicians' workload as medical resources do not grow at the same rate as the diabetic population. Decision support tools can help clinicians with the inspection of monitoring data, providing a preliminary analysis to ease their interpretation and reduce the evaluation time per patient. This paper presents Sinedie, a clinical decision support system designed to manage the treatment of patients with gestational diabetes. Sinedie aims to improve access to specialized healthcare assistance, to prevent patients from unnecessary displacements, to reduce the evaluation time per patient and to avoid gestational diabetes adverse outcomes.

METHODS

A web-based telemedicine platform was designed to remotely evaluate patients allowing them to upload their glycaemia data at home directly from their glucose meter, as well as report other monitoring variables like ketonuria and compliance to dietary treatment. Glycaemia values, not tagged by patients, are automatically labelled with their associated meal by a classifier based on the Expectation Maximization clustering algorithm and a C4.5 decision tree learning algorithm. Two finite automata are combined to determine the patient's metabolic condition, which is analysed by a rule-based knowledge base to generate therapy adjustment recommendations. Diet recommendations are automatically prescribed and notified to the patients, whereas recommendations about insulin requirements are notified also to the physicians, who will decide if insulin needs to be prescribed. The system provides clinicians with a view where patients are prioritized according to their metabolic condition. A randomized controlled clinical trial was designed to evaluate the effectiveness and safety of Sinedie interventions versus standard care and its impact in the professionals' workload in terms of the clinician's time required per patient; number of face-to-face visits; frequency and duration of telematics reviews; patients' compliance to self-monitoring; and patients' satisfaction.

RESULTS

Sinedie was clinically evaluated at "Parc Tauli University Hospital" in Spain during 17 months with the participation of 90 patients with gestational diabetes. Sinedie detected all situations that required a therapy adjustment and all the generated recommendations were safe. The time devoted by clinicians to patients' evaluation was reduced by 27.389% and face-to-face visits per patient were reduced by 88.556%. Patients reported to be highly satisfied with the system, considering it useful and trusting in being well controlled. There was no monitoring loss and, in average, patients measured their glycaemia 3.890 times per day and sent their monitoring data every 3.477days.

CONCLUSIONS

Sinedie generates safe advice about therapy adjustments, reduces the clinicians' workload and helps physicians to identify which patients need a more urgent or more exhaustive examination and those who present good metabolic control. Additionally, Sinedie saves patients unnecessary displacements which contributes to medical centres' waiting list reduction.

摘要

背景

糖尿病患病率的增长导致对医疗服务的需求不断增加,这影响了临床医生的工作量,因为医疗资源的增长速度与糖尿病患者数量的增长速度不同。决策支持工具可以帮助临床医生检查监测数据,提供初步分析以简化其解读并减少每位患者的评估时间。本文介绍了Sinedie,这是一个旨在管理妊娠期糖尿病患者治疗的临床决策支持系统。Sinedie旨在改善获得专业医疗援助的机会,防止患者进行不必要的奔波,减少每位患者的评估时间,并避免妊娠期糖尿病的不良后果。

方法

设计了一个基于网络的远程医疗平台,用于远程评估患者,使他们能够直接在家中从血糖仪上传血糖数据,并报告其他监测变量,如酮尿症和饮食治疗依从性。未由患者标记的血糖值由基于期望最大化聚类算法和C4.5决策树学习算法的分类器自动标记与其相关的膳食。结合两个有限自动机来确定患者的代谢状况,由基于规则的知识库对其进行分析以生成治疗调整建议。饮食建议会自动开出处方并通知患者,而关于胰岛素需求的建议也会通知医生,医生将决定是否需要开胰岛素。该系统为临床医生提供一个视图,其中根据患者的代谢状况对患者进行优先级排序。设计了一项随机对照临床试验,以评估Sinedie干预措施与标准护理相比的有效性和安全性,以及其对专业人员工作量的影响,具体涉及每位患者所需的临床医生时间;面对面就诊次数;远程医疗审查的频率和持续时间;患者自我监测的依从性;以及患者满意度。

结果

Sinedie在西班牙的“Parc Tauli大学医院”进行了为期17个月的临床评估,有90名妊娠期糖尿病患者参与。Sinedie检测到所有需要治疗调整的情况,并且所有生成的建议都是安全的。临床医生用于患者评估的时间减少了27.389%,每位患者的面对面就诊次数减少了88.556%。患者报告对该系统高度满意,认为它有用且相信能得到良好控制。没有出现监测缺失情况,平均而言,患者每天测量血糖3.890次,每3.477天发送一次监测数据。

结论

Sinedie生成关于治疗调整的安全建议,减少临床医生的工作量,并帮助医生确定哪些患者需要更紧急或更详尽的检查以及哪些患者代谢控制良好。此外,Sinedie为患者省去了不必要的奔波,有助于减少医疗中心的候诊名单。

文献AI研究员

20分钟写一篇综述,助力文献阅读效率提升50倍。

立即体验

用中文搜PubMed

大模型驱动的PubMed中文搜索引擎

马上搜索

文档翻译

学术文献翻译模型,支持多种主流文档格式。

立即体验