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首页> 外文期刊>BMC Neurology >Agreement between neuroimages and reports for natural language processing-based detection of silent brain infarcts and white matter disease
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Agreement between neuroimages and reports for natural language processing-based detection of silent brain infarcts and white matter disease

机译:神经阴部与自然语言加工的报告的协议,基于语言处理的无声脑梗死和白质疾病

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There are numerous barriers to identifying patients with silent brain infarcts (SBIs) and white matter disease (WMD) in routine clinical care. A natural language processing (NLP) algorithm may identify patients from neuroimaging reports, but it is unclear if these reports contain reliable information on these findings. Four radiology residents reviewed 1000 neuroimaging reports (RI) of patients age??50 years without clinical histories of stroke, TIA, or dementia for the presence, acuity, and location of SBIs, and the presence and severity of WMD. Four neuroradiologists directly reviewed a subsample of 182 images (DR). An NLP algorithm was developed to identify findings in reports. We assessed interrater reliability for DR and RI, and agreement between these two and with NLP. For DR, interrater reliability was moderate for the presence of SBIs (k?=?0.58, 95?% CI 0.46–0.69) and WMD (k?=?0.49, 95?% CI 0.35–0.63), and moderate to substantial for characteristics of SBI and WMD. Agreement between DR and RI was substantial for the presence of SBIs and WMD, and fair to substantial for characteristics of SBIs and WMD. Agreement between NLP and DR was substantial for the presence of SBIs (k?=?0.64, 95?% CI 0.53–0.76) and moderate (k?=?0.52, 95?% CI 0.39–0.65) for the presence of WMD. Neuroimaging reports in routine care capture the presence of SBIs and WMD. An NLP can identify these findings (comparable to direct imaging review) and can likely be used for cohort identification.
机译:在常规临床护理中鉴定静音脑梗塞(SBIS)和白质疾病(WMD)的患者有许多障碍。自然语言处理(NLP)算法可以识别来自神经影像报告的患者,但目前尚不清楚这些报告是否包含有关这些调查结果的可靠信息。四个放射学居民审查了1000名患者年龄的神经影像学报告(RI)?&& 50年没有临床历史的中风,TIA或痴呆症的存在,敏锐和SBI的位置,以及WMD的存在和严重程度。四名神经产物学直接审查了182张图片(DR)的子样本。开发了NLP算法以确定报告中的结果。我们评估了DR和RI的Interrater可靠性,以及这两个和NLP之间的协议。对于DR,Interrater可靠性在SBIS存在下适度(K?= 0.58,95,95〜95℃,0.46-0.69)和WMD(k?= 0.49,95〜95〜0.35-0.63),中等至大量SBI和WMD的特征。博士和ri之间的协议很大,就存在SBIS和WMD的存在,并且公平地达到SBI和WMD的特征。在存在WMD的存在下,NLP和DR之间的达成基本适于存在SBIS(K?= 0.64,95℃,95.76)和中等(K?= 0.52,95〜50.52,95〜50.52,95〜0.39-0.65)。常规护理中的神经影像报告捕获SBI和WMD的存在。 NLP可以识别这些发现(与直接成像评论相当),并且可能用于队列识别。

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