Logo image
Evaluating Performance of the Spetzler-Martin Supplemented Model in Selecting Patients With Brain Arteriovenous Malformation for Surgery
Journal article

Evaluating Performance of the Spetzler-Martin Supplemented Model in Selecting Patients With Brain Arteriovenous Malformation for Surgery

Helen Kim, Tony Pourmohamad, Erick M Westbroek, Charles E McCulloch, Michael T Lawton and William L Young
Stroke, Vol.43(9), pp.2497-2499
09/01/2012

Abstract

1102 Cardiorespiratory Medicine and Haematology (for) 1103 Clinical Sciences (for) 1109 Neurosciences (for) 32 Biomedical and Clinical Sciences (for-2020) 3202 Clinical sciences (for-2020) 3209 Neurosciences (for-2020) 3211 Oncology and Carcinogenesis (for-2020) 4201 Allied health and rehabilitation science (for-2020) 7.3 Management and decision making (hrcs-rac) Adult (mesh) Aged (mesh) Brain Disorders (rcdc) Central Nervous System Vascular Malformations (mesh) cerebral arteriovenous malformations Female (mesh) Humans (mesh) Logistic Models (mesh) Male (mesh) Microsurgery (mesh) Middle Aged (mesh) modified Rankin Scale net reclassification Neurology & Neurosurgery (science-metrix) Neurosciences (rcdc) Neurosurgical Procedures (mesh) Patient Selection (mesh) Predictive Value of Tests (mesh) receiver operator curve Reproducibility of Results (mesh) Risk Assessment (mesh) ROC Curve (mesh) Statistical (mesh) Young Adult (mesh)
BACKGROUND AND PURPOSE: Our recently proposed point scoring model includes the widely-used Spetzler-Martin (SM)-5 variables, along with age, unruptured presentation, and diffuse border (SM-Supp). Here we evaluate the SM-Supp model performance compared with SM-5, SM-3, and Toronto prediction models using net reclassification index, which quantifies the correct movement in risk reclassification, and validate the model in an independent data set. METHODS: Bad outcome was defined as worsening between preoperative and final postoperative modified Rankin Scale score. Point scores for each model were used as predictors in logistic regression and predictions evaluated using net reclassification index at varying thresholds (10%-30%) and any threshold (continuous net reclassification index >0). Performance was validated in an independent data set (n=117). RESULTS: Net gain in risk reclassification was better using the SM-Supp model over a range of threshold values (net reclassification index=9%-25%) and significantly improved overall predictions for outcomes in the development data set, yielding a continuous net reclassification index of 64% versus SM-5, 67% versus SM-3, and 61% versus Toronto (all P<0.001). In the validation data set, the SM-Supp model again correctly reclassified a greater proportion of patients versus SM-5 (82%), SM-3 (85%), and Toronto models (69%). CONCLUSIONS: The SM-Supp model demonstrated better discrimination and risk reclassification than several existing models and should be considered for clinical practice to estimate surgical risk in patients with brain arteriovenous malformation.

Metrics

1 Record Views

Details

Logo image