Solitary pulmonary nodules: clinical prediction model versus physicians.

OBJECTIVE To determine whether a clinical prediction model developed to identify malignant lung nodules based on clinical data and radiologic lung nodule characteristics could predict a malignant lung nodule diagnosis with higher accuracy than physicians. MATERIAL AND METHODS One hundred cases were obtained by using a stratified random sample from a retrospective cohort of 629 patients with newly discovered 4- to 30-mm radiologically indeterminate solitary pulmonary nodules (SPNs) on chest radiography. A chest radiologist, pulmonologist, thoracic surgeon, and general internist made predictions of a malignant lesion and recommendations for management (thoracotomy, transthoracic needle aspiration biopsy, or observation) on the basis of radiologic and clinical data used to develop the clinical prediction rule. The predictions of a malignant lung nodule were compared with the probability of malignant involvement from a previously validated clinical prediction model to identify malignant nodules on the basis of three clinical characteristics (age, smoking status, and history of cancer greater than or equal to 5 years previously) and three radiologic characteristics (nodule diameter, spiculation, and upper lobe location). RESULTS Receiver operating characteristic analysis showed no significant difference between the logistic model and the physicians' predictions. Calibration curves revealed that physicians overestimated the probability of a malignant lesion in patients with low risk of malignant disease by the prediction rule; this finding suggests a potential for the decision rule to improve the management of patients with SPNs that are likely to be benign. CONCLUSION The prediction model was not better than physicians' predictions of malignant SPNs. The prediction rule may have potential to improve the management of patients with SPNs that are likely to be benign.

[1]  N V Dawson,et al.  Physician judgment in clinical settings: methodological influences and cognitive performance. , 1993, Clinical chemistry.

[2]  A. Fishman Pulmonary Diseases and Disorders , 1980 .

[3]  S. Swensen,et al.  The probability of malignancy in solitary pulmonary nodules. Application to small radiologically indeterminate nodules. , 1997, Archives of internal medicine.

[4]  E A Zerhouni,et al.  The Solitary Pulmonary Nodule: Assessment, Diagnosis, and Management , 1987 .

[5]  S. Swensen,et al.  An integrated approach to evaluation of the solitary pulmonary nodule. , 1990, Mayo Clinic proceedings.

[6]  M. Mack,et al.  Thoracoscopy for the diagnosis of the indeterminate solitary pulmonary nodule. , 1993, The Annals of thoracic surgery.

[7]  Edwards Fh,et al.  The theorem of Bayes as a clinical research tool. , 1987 .

[8]  Jay J.J. Christensen-Szalanski,et al.  Physicians' use of probabilistic information in a real clinical setting. , 1981 .

[9]  F H Edwards,et al.  Bayesian statistical theory in the preoperative diagnosis of pulmonary lesions. , 1987, Chest.

[10]  J. Hanley,et al.  A method of comparing the areas under receiver operating characteristic curves derived from the same cases. , 1983, Radiology.

[11]  J. Hanley,et al.  The meaning and use of the area under a receiver operating characteristic (ROC) curve. , 1982, Radiology.

[12]  A. Bernard,et al.  Resection of pulmonary nodules using video-assisted thoracic surgery. The Thorax Group. , 1996, The Annals of thoracic surgery.