Sim Dawn A, Keane Pearse A, Tufail Adnan, Egan Catherine A, Aiello Lloyd Paul, Silva Paolo S
Department of Ophthalmology, Harvard Medical School and Beetham Eye Institute, Joslin Diabetes Center, One Joslin Place, Boston, MA, 02215, USA.
Curr Diab Rep. 2015 Mar;15(3):14. doi: 10.1007/s11892-015-0577-6.
There will be an estimated 552 million persons with diabetes globally by the year 2030. Over half of these individuals will develop diabetic retinopathy, representing a nearly insurmountable burden for providing diabetes eye care. Telemedicine programmes have the capability to distribute quality eye care to virtually any location and address the lack of access to ophthalmic services. In most programmes, there is currently a heavy reliance on specially trained retinal image graders, a resource in short supply worldwide. These factors necessitate an image grading automation process to increase the speed of retinal image evaluation while maintaining accuracy and cost effectiveness. Several automatic retinal image analysis systems designed for use in telemedicine have recently become commercially available. Such systems have the potential to substantially improve the manner by which diabetes eye care is delivered by providing automated real-time evaluation to expedite diagnosis and referral if required. Furthermore, integration with electronic medical records may allow a more accurate prognostication for individual patients and may provide predictive modelling of medical risk factors based on broad population data.
到2030年,全球预计将有5.52亿糖尿病患者。其中超过一半的人将患上糖尿病性视网膜病变,这对提供糖尿病眼部护理来说几乎是一个无法承受的负担。远程医疗项目有能力将优质的眼部护理服务提供到几乎任何地方,解决眼科服务难以获取的问题。在大多数项目中,目前严重依赖经过专门培训的视网膜图像分级人员,而这是一种全球范围内供应短缺的资源。这些因素使得有必要采用图像分级自动化流程,以提高视网膜图像评估的速度,同时保持准确性和成本效益。最近,一些为远程医疗设计的自动视网膜图像分析系统已投入商业使用。这类系统有可能大幅改善糖尿病眼部护理的提供方式,通过提供自动化实时评估,在需要时加快诊断和转诊。此外,与电子病历的整合可能会使对个体患者的预后预测更加准确,并可能基于广泛的人群数据提供医疗风险因素的预测模型。