论文标题
一种自动化和多参数算法,用于客观分析大缩影图像
An automated and multi-parametric algorithm for objective analysis of meibography images
论文作者
论文摘要
材料学是眼科医生使用的一种非接触式成像技术,用于协助评估和诊断Meibomian腺功能障碍(MGD)。虽然对种子缩影图像的人工定性分析可能会导致可重复性和效率较低,并且多参数分析要求提供更全面的信息,以发现MGD进展过程中Meibomian腺体的细微变化,但我们开发了一种自动化和多参数算法,以实现对Meibography图像的客观和定量分析。该算法的完整结构可以分为三个步骤:(1)将Tarsal结膜区域分割为感兴趣的区域(ROI); (2)ROI内的腺体的分割和鉴定; (3)定量多参数分析,包括新定义的腺体直径变形指数(DI),腺体曲折度指数(TI)和腺体信号指数(SI)。为了评估自动化算法的性能,在手动定义的地面真相与ROI和Meibomian腺的自动分段之间计算了相似性指数(K)和分段误差,包括假阳性率(R_P)和假阴性率(R_N)。在分析典型的meibograhy图像中,证明了该算法的可行性。
Meibography is a non-contact imaging technique used by ophthalmologists to assist in the evaluation and diagnosis of meibomian gland dysfunction (MGD). While artificial qualitative analysis of meibography images could lead to low repeatability and efficiency and multi-parametric analysis is demanding to offer more comprehensive information in discovering subtle changes of meibomian glands during MGD progression, we developed an automated and multi-parametric algorithm for objective and quantitative analysis of meibography images. The full architecture of the algorithm can be divided into three steps: (1) segmentation of the tarsal conjunctiva area as the region of interest (ROI); (2) segmentation and identification of glands within the ROI; and (3) quantitative multi-parametric analysis including newly defined gland diameter deformation index (DI), gland tortuosity index (TI), and glands signal index (SI). To evaluate the performance of the automated algorithm, the similarity index (k) and the segmentation error including the false positive rate (r_P) and the false negative rate (r_N) are calculated between the manually defined ground truth and the automatic segmentations of both the ROI and meibomian glands of 15 typical meibography images. The feasibility of the algorithm is demonstrated in analyzing typical meibograhy images.