Essay Patrick, Rajasekharan Ajaykumar
Teladoc Health, Inc, 1875 Lawrence St, Denver, CO, 80202, USA.
Heliyon. 2024 Feb 29;10(6):e26770. doi: 10.1016/j.heliyon.2024.e26770. eCollection 2024 Mar 30.
Telemedicine offers opportunity for robust diagnoses recommendations to support healthcare providers intra-consultation in a way that does not limit providers ability to explore diagnostic codes and make the most appropriate selection for each consultation.
The objective of this work was to develop a recommendation system for ICD-10 coding using multiclass sequence classification and deep learning. The recommendations are intended to support telemedicine clinicians in making timely and appropriate diagnosis selections. The recommendations allow clinicians to find and select the best diagnosis code much quicker and without leaving the telemedicine platform to search codes and code descriptions.
We developed an LSTM model for multi-class text sequence classification to make diagnosis recommendations. The LSTM recommender used text-based and as model inputs. Data were extracted from a live telemedicine platform which spans general medicine, dermatology, and mental health clinical specialties. A popularity-based model was used for baseline comparison.
Using over 2.8 MM telemedicine consultations during 2021 and 2022, our LSTM recommender average accuracy was 31.7%. LSTM recommender average coverage in the top 20 recommended diagnoses was 85.8% with an average personalization score of 0.87.
LSTM multi-class sequence classification recommends diagnoses specific to individual consultations, is retrainable on regular intervals, and could improve diagnoses recommendations such that providers require less time and resources searching for diagnosis codes. In addition, the LSTM recommender is robust enough to make recommendations across clinical specialties such as and
远程医疗为提供强有力的诊断建议提供了机会,以支持医疗服务提供者在会诊过程中做出诊断,且不会限制提供者探索诊断代码并为每次会诊做出最合适选择的能力。
这项工作的目的是使用多类序列分类和深度学习开发一个用于ICD-10编码的推荐系统。这些建议旨在支持远程医疗临床医生及时做出适当的诊断选择。这些建议使临床医生能够更快地找到并选择最佳诊断代码,而无需离开远程医疗平台去搜索代码和代码描述。
我们开发了一个用于多类文本序列分类的长短期记忆(LSTM)模型来做出诊断建议。LSTM推荐器使用基于文本的内容作为模型输入。数据从一个涵盖普通医学、皮肤科和心理健康临床专科的实时远程医疗平台提取。使用基于流行度的模型进行基线比较。
在2021年和2022年期间使用超过280万次远程医疗会诊,我们的LSTM推荐器平均准确率为31.7%。LSTM推荐器在前20个推荐诊断中的平均覆盖率为85.8%,平均个性化得分为0.87。
LSTM多类序列分类为个别会诊推荐特定诊断,可定期重新训练,并可改善诊断建议,使提供者在搜索诊断代码时所需的时间和资源更少。此外,LSTM推荐器足够强大,能够跨普通医学和皮肤科等临床专科做出推荐。