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Patient symptoms elicitation process for breast cancer medical expert systems: A semantic web and natural language parsing approach

机译:乳腺癌医学专家系统的患者症状诱发过程:语义网和自然语言解析方法

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Information gathering from patient by clinicians during diagnostic procedures may sometimes require some skills to adequately collect required information that will be sufficient for the procedure. A situation where this information gathering may proof difficult in when a diagnostic decision making support system (DDSS) will have to gather such information from patient before carrying out the diagnostic procedure. Research has proven that it is more challenging to ensure user or patient inputs, in their raw form, maps into the list of acceptable medical terms for diagnostic tasks. This paper therefore proposes a formalized input generating model that addresses this shortcoming through the creation of an inference process, breast cancer lexicon, rule set and natural language processing (NLP). We developed an input generation algorithm which uses the python natural language processing capability in first filtering and generation the first pre-input collection. Furthermore, this algorithm then feeds in the pre-input word collection as input into the inference engine which has in its memory the rule set and ontology-based lexicon developed. Finally, this generates a list of acceptable tokens that will be sent into the medical expert system or DDSS for the diagnosing breast cancer. This proposed model was tested on a breast cancer based DDSS earlier designed by this authors, and result shows that the inference support of this model generates additional input of about 64% compared to when the patient's input where sent in as input in is state.
机译:临床医生在诊断过程中从患者那里收集的信息有时可能需要一些技能,以充分收集所需的信息,这些信息对于该过程是足够的。当诊断决策支持系统(DDSS)在执行诊断程序之前必须从患者那里收集此类信息时,可能难以收集这种信息。研究证明,要确保将用户或患者的原始输入形式映射到用于诊断任务的可接受医学术语列表中,将更具挑战性。因此,本文提出了一种形式化的输入生成模型,该模型通过创建推理过程,乳腺癌词汇,规则集和自然语言处理(NLP)来解决此缺点。我们开发了一种输入生成算法,该算法在首次过滤和生成第一个预输入集合时使用python自然语言处理能力。此外,该算法然后将预输入单词集合作为输入输入推理引擎,该推理引擎在其存储器中具有规则集和基于本体的词典。最后,这将生成可接受令牌的列表,这些令牌将被发送到医学专家系统或DDSS中,用于诊断乳腺癌。该提议的模型已在此作者较早设计的基于乳腺癌的DDSS上进行了测试,结果表明,与将患者输入作为输入输入时的状态相比,该模型的推理支持可产生约64%的附加输入。

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