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日本儿科急诊应用研究网络(PECRN)头部创伤预测规则的外部验证

External Validation of the PECARN Head Trauma Prediction Rules in Japan.

作者信息

Ide Kentaro, Uematsu Satoko, Tetsuhara Kenichi, Yoshimura Satoshi, Kato Takahiro, Kobayashi Tohru

机构信息

Division of Critical Care Medicine, National Center for Child Health and Development, Tokyo, Japan.

Department of Critical Care Medicine, The Hospital for Sick Children, Toronto, Ontario, Canada.

出版信息

Acad Emerg Med. 2017 Mar;24(3):308-314. doi: 10.1111/acem.13129.

Abstract

OBJECTIVES

The Pediatric Emergency Care Applied Research Network (PECARN) head trauma prediction rules are used to assist computed tomography (CT) decision-making for children with minor head trauma. Although the PECARN rules have been validated in North America and Europe, they have not yet been validated in Asia. In Japan, there are no clinical decision rules for children with minor head trauma. The rate of head CT for children with minor head trauma in Japan is high since CT is widely accessible across the country. The objective of this study was to evaluate the diagnostic accuracy of the PECARN rules for identifying clinically important traumatic brain injuries (ciTBI) in children with minor head trauma in Japan.

METHODS

We conducted a retrospective cohort study at a tertiary care pediatric hospital in Japan (30,000 patients/year). We enrolled all children younger than 18 years with minor head trauma (Glasgow Coma Scale ≥ 14) who presented to the emergency department within 24 hours of their injury between January and December 2013. We retrospectively classified the children into three risk categories according to the PECARN rules. The PECARN rules were considered negative when children were classified into the very-low-risk category. The primary outcome was considered positive when a child had ciTBI defined as head injury resulting in death, neurosurgery, intubation for > 24 hours, or hospital admission ≥ 2 nights with evidence of TBI on CT.

RESULTS

Among 2,208 children included in the study, 24 (1.1%) had ciTBI. Sensitivities and specificities of the PECARN rules to predict ciTBI were 85.7% (12/14; 95% confidence interval [CI] = 57.2 to 98.2) and 73.5% (572/778; 95% CI = 70.3 to 76.6), respectively, for children < 2 years old, and 100% (10/10; 95% CI = 58.7 to 100) and 73.5% (1033/1406; 95% CI = 71.0 to 75.7) for children ≥ 2 years old, respectively. There were 10 cases of physically abused children < 2 years old, and six (60%) of them had ciTBI. Also, two cases of physically abused children with ciTBI were classified as very low risk. If we did not include physically abused children, the sensitivity of the PECARN rule for children < 2 years old improved from 85.7% to 100% (8/8).

CONCLUSIONS

The PECARN rules were less sensitive for physically abused children, although the rules showed excellent applicability for the cohort without physical abuse. Thoughtful consideration may be needed for cases of nonaccidental trauma. Further prospective studies are required to verify the applicability of the PECARN rules for children with minor head trauma in Japan.

摘要

目的

儿科急诊护理应用研究网络(PECARN)头部创伤预测规则用于辅助轻度头部创伤儿童的计算机断层扫描(CT)决策。尽管PECARN规则已在北美和欧洲得到验证,但尚未在亚洲进行验证。在日本,尚无针对轻度头部创伤儿童的临床决策规则。由于CT在日本全国广泛可得,轻度头部创伤儿童的头部CT检查率很高。本研究的目的是评估PECARN规则在日本轻度头部创伤儿童中识别具有临床重要性的创伤性脑损伤(ciTBI)的诊断准确性。

方法

我们在日本一家三级儿科医院进行了一项回顾性队列研究(每年30,000例患者)。我们纳入了2013年1月至12月期间在受伤后24小时内到急诊科就诊的所有18岁以下轻度头部创伤(格拉斯哥昏迷量表≥14)儿童。我们根据PECARN规则将儿童回顾性地分为三个风险类别。当儿童被分类为极低风险类别时,PECARN规则被视为阴性。当儿童患有ciTBI时,主要结局被视为阳性,ciTBI定义为头部损伤导致死亡、神经外科手术、插管超过24小时或住院≥2晚且CT有TBI证据。

结果

在纳入研究的2208名儿童中,24名(1.1%)患有ciTBI。对于2岁以下儿童,PECARN规则预测ciTBI的敏感性和特异性分别为85.7%(12/14;95%置信区间[CI]=57.2至98.2)和73.5%(572/778;95%CI=70.3至76.6),对于2岁及以上儿童,分别为100%(10/10;95%CI=58.7至100)和73.5%(1033/1406;95%CI=71.0至75.7)。有10例2岁以下受身体虐待儿童,其中6例(60%)患有ciTBI。此外,2例患有ciTBI的受身体虐待儿童被分类为极低风险。如果我们不纳入受身体虐待儿童,2岁以下儿童PECARN规则的敏感性从85.7%提高到100%(8/8)。

结论

尽管PECARN规则对无身体虐待的队列显示出极好的适用性,但对受身体虐待儿童的敏感性较低。对于非意外创伤病例可能需要深思熟虑。需要进一步的前瞻性研究来验证PECARN规则在日本轻度头部创伤儿童中的适用性。

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