Department of International Health, Johns Hopkins Bloomberg School of Public Health, Baltimore, MD 21205, USA.
Trop Med Int Health. 2009 Dec;14(12):1448-56. doi: 10.1111/j.1365-3156.2009.02397.x. Epub 2009 Oct 5.
To validate trained community health workers' recognition of signs and symptoms of newborn illnesses and classification of illnesses using a clinical algorithm during routine home visits in rural Bangladesh.
Between August 2005 and May 2006, 288 newborns were assessed independently by a community health worker and a study physician. Based on a 20-sign algorithm, sick neonates were classified as having very severe disease, possible very severe disease or no disease. The physician's assessment was considered as the gold standard.
Community health workers correctly classified very severe disease in newborns with a sensitivity of 91%, specificity of 95% and kappa value of 0.85 (P < 0.001). Community health workers' recognition showed a sensitivity of more than 60% and a specificity of 97-100% for almost all signs and symptoms.
Community health workers with minimal training can use a diagnostic algorithm to identify severely ill newborns with high validity.
在孟加拉国农村地区的常规家访中,验证经过培训的社区卫生工作者对新生儿疾病的体征和症状的识别以及使用临床算法对疾病进行分类的能力。
2005 年 8 月至 2006 年 5 月期间,288 名新生儿由社区卫生工作者和研究医生进行独立评估。根据 20 项体征算法,患病新生儿被分类为患有非常严重疾病、可能患有非常严重疾病或没有疾病。医生的评估被认为是金标准。
社区卫生工作者对患有非常严重疾病的新生儿的正确分类具有 91%的敏感性、95%的特异性和 0.85 的kappa 值(P<0.001)。社区卫生工作者对几乎所有体征和症状的识别都具有超过 60%的敏感性和 97-100%的特异性。
经过最少培训的社区卫生工作者可以使用诊断算法来识别患有严重疾病的新生儿,其具有较高的有效性。