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Sorry for the delay. If your results are looking okay you're probably on the right track. There isn't anything obvious to me being wrong here, so I would suggest training with |
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Hi everyone, I'm training UNETR from scratch with 25 train and 5 val micro-CT datasets and segmentations of flowers. It's a binary problem with only 1 label per image (flower) and the background is not labelled. I've checked the BTCV and Spleen tutorials for parameter setup, but I'm still not convinced I chose all the right settings. My loss function can be volatile and very negative (ranging from 1.5 to -30) for certain images during training. The volatility of my loss function makes me unsure if I can trust the DICE scores I'm getting out, which have been okay so far (~0.70 or so after a few hundred or thousand epochs, depending on parameters). When I run novel images through the trained models, the predictions also look okay, but I want to make sure this isn't purely coincidence.
See minimal example of my code below. I suspect the strange outputs for loss may be an issue with one of the following functions: loss_function, post_label, post_pred, dice_metric.
Thanks in advance for the feedback!!
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