SymptomGraph: Identifying Symptom Clusters from Narrative Clinical Notes using Graph Clustering.

Fattah Muhammad Tahabi, Susan Storey, Xiao Luo
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Abstract

Patients with cancer or other chronic diseases often experience different symptoms before or after treatments. The symptoms could be physical, gastrointestinal, psychological, or cognitive (memory loss), or other types. Previous research focuses on understanding the individual symptoms or symptom correlations by collecting data through symptom surveys and using traditional statistical methods to analyze the symptoms, such as principal component analysis or factor analysis. This research proposes a computational system, SymptomGraph, to identify the symptom clusters in the narrative text of written clinical notes in electronic health records (EHR). SymptomGraph is developed to use a set of natural language processing (NLP) and artificial intelligence (AI) methods to first extract the clinician-documented symptoms from clinical notes. Then, a semantic symptom expression clustering method is used to discover a set of typical symptoms. A symptom graph is built based on the co-occurrences of the symptoms. Finally, a graph clustering algorithm is developed to discover the symptom clusters. Although SymptomGraph is applied to the narrative clinical notes, it can be adapted to analyze symptom survey data. We applied Symptom-Graph on a colorectal cancer patient with and without diabetes (Type 2) data set to detect the patient symptom clusters one year after the chemotherapy. Our results show that SymptomGraph can identify the typical symptom clusters of colorectal cancer patients' post-chemotherapy. The results also show that colorectal cancer patients with diabetes often show more symptoms of peripheral neuropathy, younger patients have mental dysfunctions of alcohol or tobacco abuse, and patients at later cancer stages show more memory loss symptoms. Our system can be generalized to extract and analyze symptom clusters of other chronic diseases or acute diseases like COVID-19.

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症状图:使用图聚类从叙述性临床笔记中识别症状聚类。
癌症或其他慢性病患者在治疗前后通常会出现不同的症状。症状可能是身体、胃肠道、心理或认知(记忆力丧失),或其他类型。以往的研究侧重于通过症状调查收集数据,并使用传统的统计方法(如主成分分析或因子分析)来分析症状,从而了解个体症状或症状相关性。本研究提出了一个计算系统SymptomGraph,用于识别电子健康记录(EHR)中书面临床笔记的叙述文本中的症状集群。SymptomGraph的开发使用了一套自然语言处理(NLP)和人工智能(AI)方法,首先从临床笔记中提取临床医生记录的症状。然后,使用语义症状表达聚类方法来发现一组典型症状。基于症状的共同出现来构建症状图。最后,开发了一种图聚类算法来发现症状聚类。尽管症状图应用于叙述性临床笔记,但它可以用于分析症状调查数据。我们对一名患有和不患有糖尿病(2型)的癌症患者应用症状图谱,以检测化疗后一年的患者症状群。我们的研究结果表明,SymptomGraph可以识别癌症患者化疗后的典型症状群。研究结果还表明,患有糖尿病的癌症大肠癌患者通常表现出更多的周围神经病变症状,年轻患者因酗酒或吸烟而出现精神功能障碍,癌症晚期患者表现出更多记忆丧失症状。我们的系统可以用于提取和分析其他慢性病或急性疾病(如新冠肺炎)的症状群。
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