作者
Hrvoje Bogunović,Freerk G. Venhuizen,Sophie Klimscha,Stefanos Apostolopoulos,Alireza Bab-Hadiashar,Ulaş Bağcı,Mirza Faisal Beg,Loza Bekalo,Qiang Chen,Carlos Ciller,Kaundinya Gopinath,Amirali Khodadadian Gostar,Kiwan Jeon,Zexuan Ji,Sung Ho Kang,Dara D. Koozekanani,Donghuan Lu,Dustin Morley,Keshab K. Parhi,Hyoung Suk Park,Abdolreza Rashno,Marinko V. Sarunic,Saad Shaikh,Jayanthi Sivaswamy,Ruwan Tennakoon,Shivin Yadav,Sandro De Zanet,Sebastian M. Waldstein,Bianca S. Gerendas,Caroline C. W. Klaver,Clara I. Sánchez,Ursula Schmidt‐Erfurth
摘要
Retinal swelling due to the accumulation of fluid is associated with the most vision-threatening retinal diseases. Optical coherence tomography (OCT) is the current standard of care in assessing the presence and quantity of retinal fluid and image-guided treatment management. Deep learning methods have made their impact across medical imaging, and many retinal OCT analysis methods have been proposed. However, it is currently not clear how successful they are in interpreting the retinal fluid on OCT, which is due to the lack of standardized benchmarks. To address this, we organized a challenge RETOUCH in conjunction with MICCAI 2017, with eight teams participating. The challenge consisted of two tasks: fluid detection and fluid segmentation. It featured for the first time: all three retinal fluid types, with annotated images provided by two clinical centers, which were acquired with the three most common OCT device vendors from patients with two different retinal diseases. The analysis revealed that in the detection task, the performance on the automated fluid detection was within the inter-grader variability. However, in the segmentation task, fusing the automated methods produced segmentations that were superior to all individual methods, indicating the need for further improvements in the segmentation performance.