Feldman David S, Straight Joseph J, Badra Mohammad I, Mohaideen Ahamed, Madan Sanjeev S
Division of Pediatric Orthopaedic Surgery, New York University Hospital for Joint Diseases, New York, NY, USA.
J Pediatr Orthop. 2006 May-Jun;26(3):353-7. doi: 10.1097/01.bpo.0000214928.25809.f9.
Pediatric patients require a systematic approach to treating back pain that minimizes the number of diagnostic studies without missing specific diagnoses. This study reviews an algorithm for the evaluation of pediatric back pain and assesses critical factors in the history and physical examination that are predictive of specific diagnoses. Eighty-seven pediatric patients with thoracic and/or lumbar back pain were treated utilizing after this algorithm. If initial plain radiographs were positive, patients were considered to have a specific diagnosis. If negative, patients with constant pain, night pain, radicular pain, and/or an abnormal neurological examination obtained a follow-up magnetic resonance imaging. Patients with negative radiographs and intermittent pain were diagnosed with nonspecific back pain. Twenty-one (24%) of 87 patients had positive radiographs and were treated for their specific diagnoses. Nineteen (29%) of 66 patients with negative radiographs had constant pain, night pain, radicular pain, and/or an abnormal neurological examination. Ten of these 19 patients had a specific diagnosis determined by magnetic resonance imaging. Therefore, 31 (36%) of 87 patients had a specific diagnosis. Back pain of other 56 patients was of a nonspecific nature. No specific diagnoses were missed at latest follow-up. Specificity for determining a specific diagnosis was very high for radicular pain (100%), abnormal neurological examination (100%), and night pain (95%). Radicular pain and an abnormal neurological examination also had high positive predictive value (100%). Lumbar pain was the most sensitive (67%) and had the highest negative predictive value (75%). This algorithm seems to be an effective tool for diagnosing pediatric back pain, and this should help to reduce costs and patient/family anxiety and to avoid unnecessary radiation exposure.
儿科患者需要一种系统的方法来治疗背痛,这种方法要尽量减少诊断性检查的次数,同时又不遗漏特定的诊断。本研究回顾了一种评估儿科背痛的算法,并评估了病史和体格检查中可预测特定诊断的关键因素。87例患有胸段和/或腰段背痛的儿科患者采用该算法进行治疗。如果初始X线平片结果为阳性,则认为患者有特定诊断。如果结果为阴性,对于持续疼痛、夜间疼痛、神经根性疼痛和/或神经系统检查异常的患者,需进行后续磁共振成像检查。X线平片结果为阴性且为间歇性疼痛的患者被诊断为非特异性背痛。87例患者中有21例(24%)X线平片结果为阳性,并针对其特定诊断进行了治疗。66例X线平片结果为阴性的患者中有19例(29%)存在持续疼痛、夜间疼痛、神经根性疼痛和/或神经系统检查异常。这19例患者中有10例通过磁共振成像确定了特定诊断。因此,87例患者中有31例(36%)有特定诊断。其他56例患者的背痛为非特异性。在最近的随访中没有遗漏任何特定诊断。对于确定特定诊断,神经根性疼痛(100%)、神经系统检查异常(100%)和夜间疼痛(95%)的特异性非常高。神经根性疼痛和神经系统检查异常也具有很高的阳性预测值(100%)。腰痛最为敏感(67%),具有最高的阴性预测值(75%)。该算法似乎是诊断儿科背痛的有效工具,这有助于降低成本、减轻患者/家属的焦虑,并避免不必要的辐射暴露。