Alambo Amanuel, Andrew Ryan, Gollarahalli Sid, Vaughn Jacqueline, Banerjee Tanvi, Thirunarayan Krishnaprasad, Abrams Daniel, Shah Nirmish
Annu Int Conf IEEE Eng Med Biol Soc. 2020 Jul;2020:5838-5841. doi: 10.1109/EMBC44109.2020.9175599.
Sickle Cell Disease (SCD) is a hereditary disorder of red blood cells in humans. Complications such as pain, stroke, and organ failure occur in SCD as malformed, sickled red blood cells passing through small blood vessels get trapped. Particularly, acute pain is known to be the primary symptom of SCD. The insidious and subjective nature of SCD pain leads to challenges in pain assessment among Medical Practitioners (MPs). Thus, accurate identification of markers of pain in patients with SCD is crucial for pain management. Classifying clinical notes of patients with SCD based on their pain level enables MPs to give appropriate treatment. We propose a binary classification model to predict pain relevance of clinical notes and a multiclass classification model to predict pain level. While our four binary machine learning (ML) classifiers are comparable in their performance, Decision Trees had the best performance for the multiclass classification task achieving 0.70 in F-measure. Our results show the potential clinical text analysis and machine learning offer to pain management in sickle cell patients.
镰状细胞病(SCD)是人类红细胞的一种遗传性疾病。在SCD中会出现疼痛、中风和器官衰竭等并发症,因为畸形的镰状红细胞在通过小血管时会被困住。特别是,急性疼痛是已知的SCD的主要症状。SCD疼痛的隐匿性和主观性给医生(MPs)进行疼痛评估带来了挑战。因此,准确识别SCD患者的疼痛标志物对于疼痛管理至关重要。根据SCD患者的疼痛程度对其临床记录进行分类,使医生能够给予适当的治疗。我们提出了一个二元分类模型来预测临床记录的疼痛相关性,以及一个多类分类模型来预测疼痛程度。虽然我们的四个二元机器学习(ML)分类器在性能上相当,但决策树在多类分类任务中表现最佳,F值达到0.70。我们的结果显示了临床文本分析和机器学习在镰状细胞病患者疼痛管理中的潜在作用。