Quellec Gwénolé, Lamard Mathieu, Josselin Pierre Marie, Cazuguel Guy, Cochener Béatrice, Roux Christian
INSTITUT TELECOM, TELECOM Bretag, F-29200 Brest, France.
IEEE Trans Med Imaging. 2008 Sep;27(9):1230-41. doi: 10.1109/TMI.2008.920619.
In this paper, we propose an automatic method to detect microaneurysms in retina photographs. Microaneurysms are the most frequent and usually the first lesions to appear as a consequence of diabetic retinopathy. So, their detection is necessary for both screening the pathology and follow up (progression measurement). Automating this task, which is currently performed manually, would bring more objectivity and reproducibility. We propose to detect them by locally matching a lesion template in subbands of wavelet transformed images. To improve the method performance, we have searched for the best adapted wavelet within the lifting scheme framework. The optimization process is based on a genetic algorithm followed by Powell's direction set descent. Results are evaluated on 120 retinal images analyzed by an expert and the optimal wavelet is compared to different conventional mother wavelets. These images are of three different modalities: there are color photographs, green filtered photographs, and angiographs. Depending on the imaging modality, microaneurysms were detected with a sensitivity of respectively 89.62%, 90.24%, and 93.74% and a positive predictive value of respectively 89.50%, 89.75%, and 91.67%, which is better than previously published methods.
在本文中,我们提出了一种自动检测视网膜照片中微动脉瘤的方法。微动脉瘤是糖尿病视网膜病变最常见且通常最早出现的病变。因此,对其进行检测对于筛查病情和后续跟踪(进展测量)都很有必要。目前这项任务是手动完成的,实现自动化将带来更高的客观性和可重复性。我们建议通过在小波变换图像的子带中局部匹配病变模板来检测微动脉瘤。为了提高方法的性能,我们在提升方案框架内寻找最适配的小波。优化过程基于遗传算法,随后是鲍威尔方向集下降法。结果在由专家分析的120张视网膜图像上进行评估,并将最优小波与不同的传统母小波进行比较。这些图像有三种不同的模态:彩色照片、绿色滤光照片和血管造影照片。根据成像模态,微动脉瘤检测的灵敏度分别为89.62%、90.24%和93.74%,阳性预测值分别为89.50%、89.75%和91.67%,优于先前发表的方法。