Purpose: To develop and evaluate a deep learning-based quality control system for Lumbar Spinal Digital Radiographs (LSDR), designed to automate and improve their evaluation and reduce reliance on manual reviews. Methods: This retrospective study utilized a deep learning workflow comprising image segmentation, feature extraction, and a classification model. The dataset, including anteroposterior (AP) and lateral (LAT) X-ray images, was expanded through data augmentation techniques. Four U-Net-ba
Towards Real-Time Quality Assurance: Integrating Deep Learning and Classical ML into the Digital Radiography Pipeline
Hsuan‐Yu Chen·Chih-Hao Chang·Sheng-Hung Liao·Meng-Hsun Wu·Kuan-Yi Chen·Ta-Wei Yang·Jungwei Fan·Cheng‐Fu Chou
