Retrospective analysis of a longitudinal cohort. To identify the presence of a scoliosis from surface data. Identifying AIS can be difficult. Screening is not universal for reasons including high false positive and negative rates. These difficulties can lead to some adolescents missing out on bracing. Logistic regression analysis of ISIS2 surface topography images only was performed. The x,y positions of the shoulders (Sh), axillae (Ax), waist (Waist) and the x,y,z positions of the most prominent points over the posterior torso (Scap) were used for the thoracic, thoracolumbar / lumbar and whole spine. The models were used to identify the presence of a 20° or larger scoliosis. Differences in the position of the landmarks were analysed comparing left and right, with the suffix 'Ht' representing a difference in the y coordinate,'Off' the x coordinate and 'Depth', the z coordinate. Model accuracy was assessed as both percentages and ROC curves with the coefficients as odds ratios. There were 1283 images (1015 females and 268 males) all with a diagnosis of AIS. The models identified a scoliosis in the thoracic spine with an 83% accuracy (AUC 0.91), thoracolumbar / lumbar spine 74% accuracy (AUC 0.76) and whole spine 80% accuracy (AUC 0.88). Significant parameters were AxDiffHt, AxDiffOff, WaistDiffHt, ScapDiffOff and ScapDiffHt for the thoracic curves, AxDiffHt, AxDiffOff, WaistDiffHt for the thoracolumbar / lumbar curves and AxDiffHt, AxDiffOff, WaistDiffHt and ScapDiffHt for the whole spine. The use of fixed anatomical points around the torso, analysed using logistic regression, has a high accuracy for identifying curves in the thoracic, thoracolumbar / lumbar and whole spines. Whilst coming from surface topography images, the results raise the future use of digital photography as a tool for the identification of a small scoliosis without using other imaging techniques.