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LaTIM Labs' solution in the MMAC2023 Challenge. 8th place in Task 1, 2nd place in Task 2, and 1st place in Task 3.

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MMAC_LaTIM_Solution

Here's the LaTIM team's solution in the MICCAI MMAC 2023 Challenge.

We are the TOP 8 of the Task 1-Classification of myopic maculopathy, the TOP 2 of the Task 2-Segmentation of myopic maculopathy plus lesions, and the TOP 1 of the Task 3-Prediction of spherical equivalent.

If you use our code, please cite: Automated Detection of Myopic Maculopathy in MMAC 2023: Achievements in Classification, Segmentation, and Spherical Equivalent Prediction.


Training

This table provides a brief description of our operators and detailed parameters for training. Unless otherwise specified, all experiments are conducted using reported configurations and parameters.

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Inference

Submissions and weights for the validation and testing phases (four versions per task): Submissions_MMAC_LaTIM

Task 1 - Classification of myopic maculopathy

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Task 2 - Segmentation of myopic maculopathy plus lesions

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Task 3 - Prediction of spherical equivalent

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LaTIM Labs' solution in the MMAC2023 Challenge. 8th place in Task 1, 2nd place in Task 2, and 1st place in Task 3.

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