Clinical Text Classification with Word Representation Features and Machine Learning Algorithms

L. Almazaydeh, Mohammed A. Abuhelaleh, Arar Al Tawil, K. Elleithy
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引用次数: 1

Abstract

Clinical text classification of electronic medical records is a challenging task. Existing electronic records suffer from irrelevant text, misspellings, semantic ambiguity, and abbreviations. The approach reported in this paper elaborates on machine learning techniques to develop an intelligent framework for classification of the medical transcription dataset. The proposed approach is based on four main phases: the text preprocessing phase, word representation phase, features reduction phase and classification phase. We have used four machine learning algorithms, support vector machines, naïve bayes, logistic regression and k-nearest neighbors in combination with different word representation models. We have applied the four algorithms to the bag of words, to TF-IDF, to word2vec.  Experimental results were evaluated based on precision, recall, accuracy and F1 score. The best results were obtained with the combination of the k-NN classifier, and the word represented by Word2vec achieving an accuracy of 92% to correctly classify the medical specialties based on the transcription text.
基于词表示特征和机器学习算法的临床文本分类
电子病历的临床文本分类是一项具有挑战性的任务。现有的电子记录存在不相关的文本、拼写错误、语义模糊和缩写等问题。本文报告的方法详细阐述了机器学习技术,以开发用于医学转录数据集分类的智能框架。该方法主要分为四个阶段:文本预处理阶段、词表示阶段、特征约简阶段和分类阶段。我们使用了四种机器学习算法,支持向量机,naïve贝叶斯,逻辑回归和k近邻,结合不同的单词表示模型。我们将这四种算法应用于单词包,TF-IDF和word2vec。实验结果从查全率、查全率、查准率和F1评分四个方面进行评价。结合k-NN分类器的分类效果最好,以Word2vec为代表的单词基于转录文本对医学专业进行正确分类的准确率达到92%。
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