首页> 外文期刊>Journal of the American Medical Informatics Association : >A system for classifying disease comorbidity status from medical discharge summaries using automated hotspot and negated concept detection.
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A system for classifying disease comorbidity status from medical discharge summaries using automated hotspot and negated concept detection.

机译:一种使用自动热点和否定概念检测从医疗出院摘要中对疾病合并症状态进行分类的系统。

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OBJECTIVE Free-text clinical reports serve as an important part of patient care management and clinical documentation of patient disease and treatment status. Free-text notes are commonplace in medical practice, but remain an under-used source of information for clinical and epidemiological research, as well as personalized medicine. The authors explore the challenges associated with automatically extracting information from clinical reports using their submission to the Integrating Informatics with Biology and the Bedside (i2b2) 2008 Natural Language Processing Obesity Challenge Task. DESIGN A text mining system for classifying patient comorbidity status, based on the information contained in clinical reports. The approach of the authors incorporates a variety of automated techniques, including hot-spot filtering, negated concept identification, zero-vector filtering, weighting by inverse class-frequency, and error-correcting of output codes with linear support vector machines. MEASUREMENTS Performance was evaluated in terms of the macroaveraged F1 measure. RESULTS The automated system performed well against manual expert rule-based systems, finishing fifth in the Challenge's intuitive task, and 13(th) in the textual task. CONCLUSIONS The system demonstrates that effective comorbidity status classification by an automated system is possible.
机译:目的自由文本临床报告是患者护理管理以及患者疾病和治疗状态的临床文档的重要组成部分。自由文本注释在医学实践中很常见,但是仍然是临床和流行病学研究以及个性化医学的未充分利用的信息来源。作者探索了将临床信息自动提取信息所面临的挑战,方法是将其提交给生物学与床头信息集成(i2b2)2008自然语言处理肥胖挑战任务。设计基于临床报告中包含的信息的文本挖掘系统,用于对患者合并症状态进行分类。作者的方法采用了多种自动化技术,包括热点滤波,否定概念识别,零向量滤波,通过逆类频率加权以及使用线性支持向量机对输出代码进行纠错。测量根据宏观平均F1测度评估性能。结果自动化系统相对于基于手动专家规则的系统表现良好,在挑战赛的直观任务中排名第五,在文本任务中排名第十三。结论该系统证明通过自动化系统进行有效的合并症状态分类是可能的。

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