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Input images data type #1

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LidiaGarrucho opened this issue Sep 2, 2021 · 4 comments
Open

Input images data type #1

LidiaGarrucho opened this issue Sep 2, 2021 · 4 comments

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@LidiaGarrucho
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I would like to extract the Percent Density of INBreast dataset to compare with the BI-RAD classification present on the dataset. I am running the GUI provided and selecting as input folder the DICOM (.dcm) images. The output message on the monitor is not complete: LIBRA failed. No Task on queue.
I have selected 'all' under tasks to be completed.
I would like to have more clear instructions about the images type supported: only DICOM, nifti, png images?
Also in how to get the PD from the dataset.
Thank you

@waltman
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waltman commented Sep 14, 2021

Hi Lidia,

Thanks for your interest in Deep-LIBRA! My apologies for the delay in responding to your bug report. The person who wrote the code has since left the lab, which makes support a bit of a challenge. I've been in contact with him, and he had a few questions:

  • Are you the GUI or the command line interface?
  • Deep LIBRA is a 6 step process. Do you know which processes completed or failed?
  • Could you include any more output for debugging?

@catalinabustam
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Hi Waltman

I'm getting the same error trying with different image formats (DICOM, JPEG, PNG) but I realized that the required folder with the network is not included in this repository "~ / Deep-LIBRA / Net" folder. Could you please tell where do I can find it?

Thanks in advance

@omaghsoudi
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You need to have networks, which you can use a temporary link added here.

@catalinabustam
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Thanks a Million!

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4 participants