De Santis Olga, Kilowoko Mary, Kyungu Esther, Sangu Willy, Cherpillod Pascal, Kaiser Laurent, Genton Blaise, D'Acremont Valérie
Department of Ambulatory Care and Community Medicine, University of Lausanne, Lausanne, Switzerland.
University of Barcelona, Barcelona, Spain.
PLoS One. 2017 May 2;12(5):e0173314. doi: 10.1371/journal.pone.0173314. eCollection 2017.
To construct evidence-based guidelines for management of febrile illness, it is essential to identify clinical predictors for the main causes of fever, either to diagnose the disease when no laboratory test is available or to better target testing when a test is available. The objective was to investigate clinical predictors of several diseases in a cohort of febrile children attending outpatient clinics in Tanzania, whose diagnoses have been established after extensive clinical and laboratory workup.
From April to December 2008, 1005 consecutive children aged 2 months to 10 years with temperature ≥38°C attending two outpatient clinics in Dar es Salaam were included. Demographic characteristics, symptoms and signs, comorbidities, full blood count and liver enzyme level were investigated by bi- and multi-variate analyses (Chan, et al., 2008). To evaluate accuracy of combined predictors to construct algorithms, classification and regression tree (CART) analyses were also performed.
62 variables were studied. Between 4 and 15 significant predictors to rule in (aLR+>1) or rule out (aLR+<1) the disease were found in the multivariate analysis for the 7 more frequent outcomes. For malaria, the strongest predictor was temperature ≥40°C (aLR+8.4, 95%CI 4.7-15), for typhoid abdominal tenderness (5.9,2.5-11), for urinary tract infection (UTI) age ≥3 years (0.20,0-0.50), for radiological pneumonia abnormal chest auscultation (4.3,2.8-6.1), for acute HHV6 infection dehydration (0.18,0-0.75), for bacterial disease (any type) chest indrawing (19,8.2-60) and for viral disease (any type) jaundice (0.28,0.16-0.41). Other clinically relevant and easy to assess predictors were also found: malaria could be ruled in by recent travel, typhoid by jaundice, radiological pneumonia by very fast breathing and UTI by fever duration of ≥4 days. The CART model for malaria included temperature, travel, jaundice and hepatomegaly (sensitivity 80%, specificity 64%); typhoid: age ≥2 years, jaundice, abdominal tenderness and adenopathy (46%,93%); UTI: age <2 years, temperature ≥40°C, low weight and pale nails (20%,96%); radiological pneumonia: very fast breathing, chest indrawing and leukocytosis (38%,97%); acute HHV6 infection: less than 2 years old, (no) dehydration, (no) jaundice and (no) rash (86%,51%); bacterial disease: chest indrawing, chronic condition, temperature ≥39.7°c and fever duration >3 days (45%,83%); viral disease: runny nose, cough and age <2 years (68%,76%).
A better understanding of the relative performance of these predictors might be of great help for clinicians to be able to better decide when to test, treat, refer or simply observe a sick child, in order to decrease morbidity and mortality, but also to avoid unnecessary antimicrobial prescription. These predictors have been used to construct a new algorithm for the management of childhood illnesses called ALMANACH.
为制定发热性疾病管理的循证指南,识别发热主要病因的临床预测因素至关重要,这有助于在无法进行实验室检查时诊断疾病,或在可进行检查时更有针对性地选择检查项目。本研究旨在调查坦桑尼亚门诊发热儿童队列中几种疾病的临床预测因素,这些儿童的诊断是在经过广泛的临床和实验室检查后确定的。
2008年4月至12月,纳入达累斯萨拉姆两家门诊连续就诊的1005名年龄在2个月至10岁、体温≥38°C的儿童。通过二元和多变量分析(Chan等人,2008年)研究人口统计学特征、症状和体征、合并症、全血细胞计数和肝酶水平。为评估联合预测因素构建算法的准确性,还进行了分类和回归树(CART)分析。
共研究了62个变量。在对7种较常见疾病结局的多变量分析中,发现4至15个显著的预测因素用于确诊(aLR+>1)或排除(aLR+<1)疾病。对于疟疾,最强的预测因素是体温≥40°C(aLR+8.4,95%CI 4.7-15);伤寒是腹部压痛(5.9,2.5-11);尿路感染(UTI)是年龄≥3岁(0.20,0-0.50);放射性肺炎是胸部听诊异常(4.3,2.8-6.1);急性HHV6感染是脱水(0.18,0-0.75);细菌性疾病(任何类型)是胸廓凹陷(19,8.2-60);病毒性疾病(任何类型)是黄疸(0.28,0.16-0.41)。还发现了其他与临床相关且易于评估的预测因素:疟疾可通过近期旅行确诊;伤寒可通过黄疸确诊;放射性肺炎可通过呼吸急促确诊;UTI可通过发热持续时间≥4天确诊。疟疾的CART模型包括体温、旅行、黄疸和肝肿大(敏感性80%,特异性64%);伤寒:年龄≥2岁、黄疸、腹部压痛和腺病(46%,93%);UTI:年龄<2岁、体温≥40°C、体重低和指甲苍白(20%,96%);放射性肺炎:呼吸急促、胸廓凹陷和白细胞增多(38%,97%);急性HHV6感染:年龄小于2岁、(无)脱水、(无)黄疸和(无)皮疹(86%,51%);细菌性疾病:胸廓凹陷、慢性病、体温≥39.7°C和发热持续时间>3天(45%,83%);病毒性疾病:流鼻涕、咳嗽和年龄<2岁(68%,76%)。
更好地了解这些预测因素的相对表现可能对临床医生大有帮助,使他们能够更好地决定何时进行检查、治疗、转诊或仅观察患病儿童,以降低发病率和死亡率,同时避免不必要的抗菌药物处方。这些预测因素已被用于构建一种名为ALMANACH的儿童疾病管理新算法。