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An Electronic Health Record Text Mining Tool to Collect Real-World Drug Treatment Outcomes: A Validation Study in Patients With Metastatic Renal Cell Carcinoma

机译:电子健康纪录文本挖掘工具收集现实世界药物治疗结果:转移性肾细胞癌患者的验证研究

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Real-world evidence can close the inferential gap between marketing authorization studies and clinical practice. However, the current standard for real-world data extraction from electronic health records (EHRs) for treatment evaluation is manual review (MR), which is time-consuming and laborious. Clinical Data Collector (CDC) is a novel natural language processing and text mining software tool for both structured and unstructured EHR data and only shows relevant EHR sections improving efficiency. We investigated CDC as a real-world data (RWD) collection method, through application of CDC queries for patient inclusion and information extraction on a cohort of patients with metastatic renal cell carcinoma (RCC) receiving systemic drug treatment. Baseline patient characteristics, disease characteristics, and treatment outcomes were extracted and these were compared with MR for validation. One hundred patients receiving 175 treatments were included using CDC, which corresponded to 99% with MR. Calculated median overall survival was 21.7 months (95% confidence interval (CI) 18.7-24.8) vs. 21.7 months (95% CI 18.6-24.8) and progression-free survival 8.9 months (95% CI 5.4-12.4) vs. 7.6 months (95% CI 5.7-9.4) for CDC vs. MR, respectively. Highest F1-score was found for cancer-related variables (88.1-100), followed by comorbidities (71.5-90.4) and adverse drug events (53.3-74.5), with most diverse scores on international metastatic RCC database criteria (51.4-100). Mean data collection time was 12 minutes (CDC) vs. 86 minutes (MR). In conclusion, CDC is a promising tool for retrieving RWD from EHRs because the correct patient population can be identified as well as relevant outcome data, such as overall survival and progression-free survival.
机译:现实世界的证据可以揭示营销授权研究与临床实践之间的推论差距。然而,目前从电子健康记录(EHRS)的现实世界数据提取的现状标准是手法审查(MR),这是耗时和费力的。临床数据收集器(CDC)是一种新型的自然语言处理和文本挖掘软件工具,适用于结构化和非结构化的EHR数据,仅显示相关的EHR部分提高效率。我们通过应用CDC查询来调查CDC作为现实数据(RWD)收集方法,以便在接受全身药物治疗的转移性肾细胞癌(RCC)患者队列中的患者包含和信息提取。提取基线患者特征,疾病特征和治疗结果,将这些与验证MR进行比较。使用CDC包括接受175种治疗的一百患者,其与MR先生相当于99%。计算的中位数总生存率为21.7个月(95%置信区间(CI)18.7-24.8)与21.7个月(95%CI 18.6-24.8)和无进展生存期8.9个月(95%CI 5.4-12.4)与7.6个月(95%CI 5.7-9.4)分别为CDC与MR。发现最高的F1分数用于癌症相关变量(88.1-100),其次是合并症(71.5-90.4)和不良药物事件(53.3-74.5),国际转移RCC数据库标准(51.4-100) 。平均数据收集时间为12分钟(CDC)与86分钟(MR)。总之,CDC是从EHRS检索RWD的有希望的工具,因为可以鉴定正确的患者群体以及相关结果数据,例如整体存活和无进展生存期。

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