利用自然语言处理将病人的叙述与视觉能力和情感联系起来。

IF 1.6 4区 医学 Q3 OPHTHALMOLOGY
Dongcheng He, Susana T L Chung
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引用次数: 0

摘要

意义重大:目的:本研究的主要目的是证明应用自然语言处理(NLP)和机器学习相结合的框架来分析患者医疗记录中的叙述内容的可行性。为了测试和验证我们的框架,我们将其用于分析低视力患者的记录,并解决了两个问题:患者有关日常生活活动的叙述与他们的视力质量之间是否存在关联?患者有关日常生活活动的叙述与他们对某些 "辅助物品 "的看法之间是否存在关联?我们的数据集由 616 份低视力患者记录组成。我们从患者的主诉史中选取了多个与常见日常生活活动相关的关键词。使用 NLP 技术将与每个关键词相关的句子转换为数字数据。然后应用机器学习将与每个关键词相关的叙述分为两类,并根据不同的 "相关因素"(视力、对比敏感度以及患者对某些 "辅助物品 "的情感)进行标记:利用我们提出的框架,当患者与特定关键词相关的叙述作为输入时,我们的模型能有效预测不同兴趣因素的类别,并取得了良好的效果。例如,我们发现患者的叙述与他们在某些日常生活活动中的视力或对比敏感度有很强的关联(如 "驾驶 "与视力和对比敏感度的关联):尽管我们的数据集有限,但我们的结果表明,所提出的框架能够提取存储在医疗叙述中的语义模式,并预测患者的情绪和视力质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Using natural language processing to link patients' narratives to visual capabilities and sentiments.

Significance: Analyzing narratives in patients' medical records using a framework that combines natural language processing (NLP) and machine learning may help uncover the underlying patterns of patients' visual capabilities and challenges that they are facing and could be useful in analyzing big data in optometric research.

Purpose: The primary goal of this study was to demonstrate the feasibility of applying a framework that combines NLP and machine learning to analyze narratives in patients' medical records. To test and validate our framework, we applied it to analyze records of low vision patients and to address two questions: Was there association between patients' narratives related to activities of daily living and the quality of their vision? Was there association between patients' narratives related to activities of daily living and their sentiments toward certain "assistive items"?

Methods: Our dataset consisted of 616 records of low vision patients. From patients' complaint history, we selected multiple keywords that were related to common activities of daily living. Sentences related to each keyword were converted to numerical data using NLP techniques. Machine learning was then applied to classify the narratives related to each keyword into two categories, labeled based on different "factors of interest" (acuity, contrast sensitivity, and sentiments of patients toward certain "assistive items").

Results: Using our proposed framework, when patients' narratives related to specific keywords were used as input, our model effectively predicted the categories of different factors of interest with promising performance. For example, we found strong associations between patients' narratives and their acuity or contrast sensitivity for certain activities of daily living (e.g., "drive" in association with acuity and contrast sensitivity).

Conclusions: Despite our limited dataset, our results show that the proposed framework was able to extract the semantic patterns stored in medical narratives and to predict patients' sentiments and quality of vision.

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来源期刊
Optometry and Vision Science
Optometry and Vision Science 医学-眼科学
CiteScore
2.80
自引率
7.10%
发文量
210
审稿时长
3-6 weeks
期刊介绍: Optometry and Vision Science is the monthly peer-reviewed scientific publication of the American Academy of Optometry, publishing original research since 1924. Optometry and Vision Science is an internationally recognized source for education and information on current discoveries in optometry, physiological optics, vision science, and related fields. The journal considers original contributions that advance clinical practice, vision science, and public health. Authors should remember that the journal reaches readers worldwide and their submissions should be relevant and of interest to a broad audience. Topical priorities include, but are not limited to: clinical and laboratory research, evidence-based reviews, contact lenses, ocular growth and refractive error development, eye movements, visual function and perception, biology of the eye and ocular disease, epidemiology and public health, biomedical optics and instrumentation, novel and important clinical observations and treatments, and optometric education.
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