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      "text": "Anatomical changes can be identified by comparing segmentation maps that label each pixel with their corresponding automatic features.\nSuch changes can be seen to occur in a normal eye before it converts to exAMD and pushes the patient into a high-risk subgroup.\nThis means that patients could receive the treatment they need before exAMD conversion to save their eyesight.",
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