Tomita Katsuyuki, Sano Hiroyuki, Chiba Yasutaka, Sato Ryuji, Sano Akiko, Nishiyama Osamu, Iwanaga Takashi, Higashimoto Yuji, Haraguchi Ryuta, Tohda Yuji
Department of Respiratory Medicine and Allergology, Kinki University Faculty of Medicine, Osaka-Sayama, Osaka, Japan.
Prim Care Respir J. 2013 Mar;22(1):51-8. doi: 10.4104/pcrj.2013.00005.
To predict the presence of asthma in adult patients with respiratory symptoms, we developed a scoring algorithm using clinical parameters.
We prospectively analysed 566 adult outpatients who visited Kinki University Hospital for the first time with complaints of nonspecific respiratory symptoms. Asthma was comprehensively diagnosed by specialists using symptoms, signs, and objective tools including bronchodilator reversibility and/or the assessment of bronchial hyperresponsiveness (BHR). Multiple logistic regression analysis was performed to categorise patients and determine the accuracy of diagnosing asthma.
A scoring algorithm using the symptom-sign score was developed, based on diurnal variation of symptoms (1 point), recurrent episodes (2 points), medical history of allergic diseases (1 point), and wheeze sound (2 points). A score of >3 had 35% sensitivity and 97% specificity for discriminating between patients with and without asthma and assigned a high probability of having asthma (accuracy 90%). A score of 1 or 2 points assigned intermediate probability (accuracy 68%). After providing additional data of forced expiratory volume in 1 second/forced vital capacity (FEV(1)/FVC) ratio <0.7, the post-test probability of having asthma was increased to 93%. A score of 0 points assigned low probability (accuracy 31%). After providing additional data of positive reversibility, the post-test probability of having asthma was increased to 88%.
This pragmatic diagnostic algorithm is useful for predicting the presence of adult asthma and for determining the appropriate time for consultation with a pulmonologist.
为预测有呼吸道症状的成年患者是否患有哮喘,我们使用临床参数开发了一种评分算法。
我们前瞻性分析了566例首次因非特异性呼吸道症状就诊于近畿大学医院的成年门诊患者。由专家综合运用症状、体征及包括支气管扩张剂可逆性和/或支气管高反应性(BHR)评估在内的客观工具对哮喘进行全面诊断。进行多因素逻辑回归分析以对患者进行分类并确定哮喘诊断的准确性。
基于症状的昼夜变化(1分)、反复发作(2分)、过敏性疾病病史(1分)及哮鸣音(2分),开发了一种使用症状 - 体征评分的算法。评分>3分时,区分哮喘患者和非哮喘患者的敏感性为35%,特异性为97%,且提示哮喘的可能性高(准确性90%)。评分为1或2分提示可能性中等(准确性68%)。在提供1秒用力呼气容积/用力肺活量(FEV(1)/FVC)比值<0.7的额外数据后,哮喘的验后概率增至93%。评分为0分提示可能性低(准确性31%)。在提供可逆性阳性的额外数据后,哮喘的验后概率增至88%。
这种实用的诊断算法有助于预测成年哮喘的存在,并有助于确定咨询肺科医生的合适时机。