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Keyword spotting in doctor's handwriting on medical prescriptions

机译:在医学处方上的医生笔迹中发现关键词

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In this paper, we propose a word spotting based information retrieval approach for medical prescriptions/reports written by doctors. Sometimes due to almost illegible handwriting, it is difficult to understand the medication reports of doctors. This often confuses the patients about the actual medicine/disease names written by doctors and as a consequence they suffer. A medical prescription is generally partitioned into two parts, a printed letterhead part containing the doctor's name, designation, organization name, etc. and a handwritten part where the doctor writes patient's name and report his/her findings and suggests medicine names. There are many significance impacts of the proposed work. For example, such work can be used (i) to develop expert diagnostic systems (ii) to extract information from patient history that can be obtained by this proposed method (iii) to detect wrong medication (iv) to make different statistical analysis of the medicines prescribed by the doctors etc. To extract the information from such document images, first we extract the domain specific knowledge of doctors by identifying department names from the printed text that appears in letterhead part. From the letterhead text, the specialty/expertise of doctors is understood and this helps us to search only relevant prescription documents for word spotting in handwritten portion. Word spotting in letterhead part as well as in handwritten part has been performed using Hidden Markov Model. An efficient MLP (Multilayer Perceptron) based Tandem feature is proposed to improve the performance. From the experiment with 500 prescriptions, we have obtained encouraging results. Information from printed letterhead part improved the word spotting performance in handwritten part, significantly. (C) 2017 Elsevier Ltd. All rights reserved.
机译:在本文中,我们提出了一种基于词点识别的信息检索方法,用于医生撰写的医疗处方/报告。有时由于几乎难以辨认的笔迹,很难理解医生的用药报告。这常常使患者对医生写的实际药物/疾病名称感到困惑,结果使他们遭受痛苦。医疗处方通常分为两部分:打印的信笺抬头部分,其中包含医生的姓名,称号,组织名称等;以及手写的部分,医生在其中写下患者的姓名并报告他/她的发现并建议药物名称。拟议工作有许多重大影响。例如,此类工作可用于(i)开发专家诊断系统(ii)从患者病史中提取信息,这些信息可以通过此提议的方法获得(iii)检测错误的药物(iv)对患者的病历进行不同的统计分析为了从这些文档图像中提取信息,首先,我们通过从出现在信头部分的打印文本中识别部门名称,来提取医生的特定领域知识。从信笺上的文字可以理解医生的专长/专业知识,这有助于我们仅搜索相关的处方文件以发现手写部分出现的单词。已经使用隐马尔可夫模型对信头部分和手写部分中的单词进行了斑点识别。提出了一种有效的基于MLP(多层感知器)的串联特性,以提高性能。通过500种处方的实验,我们获得了令人鼓舞的结果。印刷信头部分的信息极大地提高了手写部分的单词识别性能。 (C)2017 Elsevier Ltd.保留所有权利。

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