Apivanichkul K.Phasukkit P.Dankulchai P.Sittiwong W.Jitwatcharakomol T.Mahidol University2023-07-172023-07-172023-06-01Sensors Vol.23 No.12 (2023)14248220https://repository.li.mahidol.ac.th/handle/20.500.14594/87864This research proposes augmenting cropped computed tomography (CT) slices with data attributes to enhance the performance of a deep-learning-based automatic left-femur segmentation scheme. The data attribute is the lying position for the left-femur model. In the study, the deep-learning-based automatic left-femur segmentation scheme was trained, validated, and tested using eight categories of CT input datasets for the left femur (F-Iā€“F-VIII). The segmentation performance was assessed by Dice similarity coefficient (DSC) and intersection over union (IoU); and the similarity between the predicted 3D reconstruction images and ground-truth images was determined by spectral angle mapper (SAM) and structural similarity index measure (SSIM). The left-femur segmentation model achieved the highest DSC (88.25%) and IoU (80.85%) under category F-IV (using cropped and augmented CT input datasets with large feature coefficients), with an SAM and SSIM of 0.117ā€“0.215 and 0.701ā€“0.732. The novelty of this research lies in the use of attribute augmentation in medical image preprocessing to enhance the performance of the deep-learning-based automatic left-femur segmentation scheme.Biochemistry, Genetics and Molecular BiologyEnhanced Deep-Learning-Based Automatic Left-Femur Segmentation Scheme with Attribute AugmentationArticleSCOPUS10.3390/s231257202-s2.0-85164023641