Lee Yu-Ching, Khalil Muhammad Adil, Lee Jui-Huan, Syakura Abdan, Ding Yi-Fang, Wang Ching-Wei
Graduate Institute of Applied Science and Technology, National Taiwan University of Science and Technology, Taipei City, Taiwan.
Graduate Institute of Biomedical Engineering, National Taiwan University of Science and Technology, Taipei City, Taiwan.
J Med Biol Eng. 2021;41(6):826-843. doi: 10.1007/s40846-021-00666-4. Epub 2021 Nov 3.
Image registration is important in medical applications accomplished by improving healthcare technology in recent years. Various studies have been proposed in medical applications, including clinical track of events and updating the treatment plan for radiotherapy and surgery. This study presents a fully automatic registration system for chest X-ray images to generate fusion results for difference analysis. Using the accurate alignment of the proposed system, the fusion result indicates the differences in the thoracic area during the treatment process.
The proposed method consists of a data normalization method, a hybrid L-SVM model to detect lungs, ribs and clavicles for object recognition, a landmark matching algorithm, two-stage transformation approaches and a fusion method for difference analysis to highlight the differences in the thoracic area. In evaluation, a preliminary test was performed to compare three transformation models, with a full evaluation process to compare the proposed method with two existing elastic registration methods.
The results show that the proposed method produces significantly better results than two benchmark methods (P-value 0.001). The proposed system achieves the lowest mean registration error distance (MRED) (8.99 , 23.55 pixel) and the lowest mean registration error ratio (MRER) w.r.t. the length of image diagonal (1.61%) compared to the two benchmark approaches with MRED (15.64 , 40.97 pixel) and (180.5 , 472.69 pixel) and MRER (2.81%) and (32.51%), respectively.
The experimental results show that the proposed method is capable of accurately aligning the chest X-ray images acquired at different times, assisting doctors to trace individual health status, evaluate treatment effectiveness and monitor patient recovery progress for thoracic diseases.
图像配准在近年来通过改进医疗技术实现的医学应用中至关重要。医学应用中已经提出了各种研究,包括临床事件跟踪以及更新放疗和手术的治疗方案。本研究提出了一种用于胸部X光图像的全自动配准系统,以生成融合结果用于差异分析。利用所提出系统的精确对齐,融合结果显示了治疗过程中胸部区域的差异。
所提出的方法包括一种数据归一化方法、一个用于检测肺部、肋骨和锁骨以进行目标识别的混合L-SVM模型、一种地标匹配算法、两阶段变换方法以及一种用于差异分析的融合方法,以突出胸部区域的差异。在评估中,进行了初步测试以比较三种变换模型,并进行了完整的评估过程以将所提出的方法与两种现有的弹性配准方法进行比较。
结果表明,所提出的方法产生的结果明显优于两种基准方法(P值<0.001)。与两种基准方法相比,所提出的系统实现了最低的平均配准误差距离(MRED)(8.99,23.55像素)和相对于图像对角线长度的最低平均配准误差率(MRER)(1.61%),两种基准方法的MRED分别为(15.64,40.97像素)和(180.5,472.69像素),MRER分别为(2.81%)和(32.51%)。
实验结果表明,所提出的方法能够准确对齐在不同时间获取的胸部X光图像,协助医生追踪个体健康状况、评估治疗效果并监测胸部疾病患者的恢复进展。