Evaluation of zero-shot performance on diabetic grading and glaucoma screening tasks.
Results:
VisionCLIP's performance compared with other methods on external datasets.
Conclusion:
VisionCLIP's significance in medical AI for retina image analysis.
Synthetic data usage to overcome traditional challenges in medical image analysis.
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arxiv.org
VisionCLIP
Statistiche
1 million synthetic fundus images paired with natural language descriptions were utilized to train VisionCLIP.
The SynFundus-1M dataset contains over one million synthetic fundus images.
医療画像解析分野で合成データ(synthetic data) の利用は将来的に革新的効果及び多岐面影韓(impact) をもたらす可能性があります。例えば、「SynFundus-1M」 デーウゼッド内部では1億枚以上も 合 成さ れた 網 膜 像 写真 (fundus images)およびそれらへ付属する診断記述(Chinese)等使われ, 従 来型 的挑戦 問題点如何免除. 合 成元細胞困難費及己私生命体質問題. 実 验 中 ,我々 全体 的数据 分割 方法 使用 ,训练 数据集:验证数据集:测试数据集 =8:1:1比率进行了实验。
この方法論(Methosdology) 能夠提供更廉價且有效率之數位偵測方案,同時也有助於加速科學家對眼睛相關領域進行更深入和精確地探索。
Generative Artificial Intelligence 技術通過隨機噪聲抽取來源不受限制數量之資料,在隱私和容量方面均可取得無限制數量之資料.
これ以往未曾有过程可以通过任何伦理和隐私问题在图象中包括诸如年龄, 性别 和种族这样个别信息.
因此我们试图在这项调查中探索生成数据(Synthetic Data ) 的应用,并找出是否经过充分综合资料训练后所产生结果与其他方法相当表现水平.
Overall, the utilization of synthetic data in medical image analysis has the potential to revolutionize traditional challenges and provide a cost-effective and efficient solution for various diagnostic tasks in ophthalmology and other medical fields. The use of Generative Artificial Intelligence technology allows access to unrestricted data in terms of privacy and volume, paving the way for more comprehensive exploration and precise analysis by scientists in eye-related domains.
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Sommario
VisionCLIP: An Ethical Language-Image Foundation Model for Retina Image Analysis