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  • Protocol for performing dee...
    Lin, Zhenzhe; Zhao, Xinyu; Yu, Shanshan; Xie, Liqiong; Xu, Yue; Zhao, Lanqin; Zhang, Guoming; Zhang, Shaochong; Lu, Yan; Lin, Haotian; Liang, Xiaoling; Lin, Duoru

    STAR protocols, 09/2024, Letnik: 5, Številka: 3
    Journal Article

    Fundus fluorescein angiography (FFA) examinations are widely used in the evaluation of fundus disease conditions to facilitate further treatment suggestions. Here, we present a protocol for performing deep learning-based FFA image analytics with classification and segmentation tasks. We describe steps for data preparation, model implementation, statistical analysis, and heatmap visualization. The protocol is applicable in Python using customized data and can achieve the whole process from diagnosis to treatment suggestion of ischemic retinal diseases. For complete details on the use and execution of this protocol, please refer to Zhao et al.1 Display omitted •Protocol for multi-tasking model development and visualization based on deep learning•Steps for diagnosing common ischemic retinal diseases using a classification task•Steps for detecting ischemic retinal disease lesion area using a segmentation task Publisher’s note: Undertaking any experimental protocol requires adherence to local institutional guidelines for laboratory safety and ethics. Fundus fluorescein angiography (FFA) examinations are widely used in the evaluation of fundus disease conditions to facilitate further treatment suggestions. Here, we present a protocol for performing deep learning-based FFA image analytics with classification and segmentation tasks. We describe steps for data preparation, model implementation, statistical analysis, and heatmap visualization. The protocol is applicable in Python using customized data and can achieve the whole process from diagnosis to treatment suggestion of ischemic retinal diseases.