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How essential are unstructured clinical narratives and information fusion to clinical trial recruitment?

机译:非结构化的临床叙述和信息融合对临床试验招募有多重要?

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摘要

Electronic health records capture patient information using structured controlled vocabularies and unstructured narrative text. While structured data typically encodes lab values, encounters and medication lists, unstructured data captures the physician’s interpretation of the patient’s condition, prognosis, and response to therapeutic intervention. In this paper, we demonstrate that information extraction from unstructured clinical narratives is essential to most clinical applications. We perform an empirical study to validate the argument and show that structured data alone is insufficient in resolving eligibility criteria for recruiting patients onto clinical trials for chronic lymphocytic leukemia (CLL) and prostate cancer. Unstructured data is essential to solving 59% of the CLL trial criteria and 77% of the prostate cancer trial criteria. More specifically, for resolving eligibility criteria with temporal constraints, we show the need for temporal reasoning and information integration with medical events within and across unstructured clinical narratives and structured data.
机译:电子健康记录使用结构化的受控词汇表和非结构化的叙述文字来捕获患者信息。虽然结构化数据通常会编码实验室值,遭遇和药物清单,但非结构化数据会捕获医师对患者病情,预后和对治疗干预的反应的解释。在本文中,我们证明了从非结构化临床叙述中提取信息对于大多数临床应用而言至关重要。我们进行了一项经验研究,以验证该论点,并表明仅结构化数据不足以解决招募患者参加慢性淋巴细胞白血病(CLL)和前列腺癌临床试验的资格标准。非结构化数据对于解决59%的CLL试验标准和77%的前列腺癌试验标准至关重要。更具体地说,为了解决具有时间限制的资格标准,我们表明需要在非结构化临床叙述和结构化数据之内和之间与医学事件进行时间推理和信息整合。

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