Marupally Abhilash Goud, Vupparaboina Kiran Kumar, Peguda Hari Kumar, Richhariya Ashutosh, Jana Soumya, Chhablani Jay
Smt. Kanuri Santhamma Retina Vitreous Centre, L.V.Prasad Eye Institute, Hyderabad, 500034, India.
Engineering Group, Srujana Center for Innovation, L.V.Prasad Eye Institute, Hyderabad, 500034, India.
BMC Ophthalmol. 2017 Sep 20;17(1):172. doi: 10.1186/s12886-017-0563-7.
Hard exudates (HEs) are the classical sign of diabetic retinopathy (DR) which is one of the leading causes of blindness, especially in developing countries. Accordingly, disease screening involves examining HEs qualitatively using fundus camera. However, for monitoring the treatment response, quantification of HEs becomes crucial and hence clinicians now seek to measure the area of HEs in the digital colour fundus (CF) photographs. Against this backdrop, we proposed an algorithm to quantify HEs using CF images and compare with previously reported technique using ImageJ.
CF photographs of 30 eyes (20 patients) with diabetic macular edema were obtained. A robust semi-automated algorithm was developed to quantify area covered by HEs. In particular, the proposed algorithm, a two pronged methodology, involved performing top-hat filtering, second order statistical filtering, and thresholding of the colour fundus images. Subsequently, two masked observers performed HEs measurements using previously reported ImageJ-based protocol and compared with those obtained through proposed method. Intra and inter-observer grading was performed for determining percentage area of HEs identified by the individual algorithm.
Of the 30 subjects, 21 were males and 9 were females with a mean age of the 50.25 ± 7.80 years (range 33-66 years). The correlation between the two measurements of semi-automated and ImageJ were 0.99 and 0.99 respectively. Previously reported method detected only 0-30% of the HEs area in 9 images, 30-60% in 12 images and 60-90% in remaining images, and more than 90% in none. In contrast, proposed method, detected 60-90% of the HEs area in 13 images and 90-100% in remaining 17 images.
Proposed method semi-automated algorithm achieved acceptable accuracy, qualitatively and quantitatively, on a heterogeneous dataset. Further, quantitative analysis performed based on intra- and inter-observer grading showed that proposed methodology detects HEs more accurately than previously reported ImageJ-based technique. In particular, we proposed algorithm detect faint HEs also as opposed to the earlier method.
硬性渗出物(HEs)是糖尿病视网膜病变(DR)的典型体征,DR是导致失明的主要原因之一,在发展中国家尤为如此。因此,疾病筛查包括使用眼底相机对HEs进行定性检查。然而,为了监测治疗反应,HEs的量化变得至关重要,因此临床医生现在试图在数字彩色眼底(CF)照片中测量HEs的面积。在此背景下,我们提出了一种使用CF图像量化HEs的算法,并与之前使用ImageJ报告的技术进行比较。
获取了30只眼睛(20名患者)患有糖尿病性黄斑水肿的CF照片。开发了一种强大的半自动算法来量化HEs覆盖的面积。具体而言,所提出的算法是一种双管齐下的方法,包括对彩色眼底图像进行顶帽滤波、二阶统计滤波和阈值处理。随后,两名蒙面观察者使用先前报告的基于ImageJ的方案进行HEs测量,并与通过所提出方法获得的测量结果进行比较。进行观察者内和观察者间分级以确定各个算法识别的HEs的面积百分比。
30名受试者中,男性21名,女性9名,平均年龄为50.25±7.80岁(范围33 - 66岁)。半自动测量和ImageJ测量之间的相关性分别为0.99和0.99。先前报告的方法在9张图像中仅检测到0 - 30%的HEs面积,在12张图像中检测到30 - 60%,在其余图像中检测到60 - 90%,在任何图像中均未检测到超过90%。相比之下,所提出的方法在13张图像中检测到60 - 90%的HEs面积,在其余17张图像中检测到90 - 100%。
所提出的方法半自动算法在异质数据集上在定性和定量方面都达到了可接受的准确性。此外,基于观察者内和观察者间分级进行的定量分析表明,所提出的方法比先前报告的基于ImageJ的技术更准确地检测HEs。特别是,我们提出的算法还能检测到微弱的HEs,这与早期方法不同。