Skip to main content

Deep learning library to encode multiple brain images and other electronic health record data in disease detection.

Project description

ze logo

Multi-Input Medical Image Machine Learning Toolkit

The Multi-Input Medical Image Machine Learning Toolkit (MultiMedImageML) is a library of Pytorch functions that can encode multiple 3D images (designed specifically for brain images) and offer a single- or multi-label output, such as a disease detection.

Thus, with a dataset of brain images and labels, you can train a model to predict dementia or multiple sclerosis from multiple input brain images.

To install Multi Med Image ML, simply type into a standard UNIX terminal

pip install multi-med-image-ml

Overview

ze figure

The core deep learning architecture is a Pytorch model that can take in variable numbers of 3D images (between one and 14 by default), then encodes them into a numerical vector and, through an adversarial training process, creates an intermediate representation that contains information about disease biomarkers but not confounds, like patient age and scanning site.

ze regress figure

The confound regression process essentially disguises the intermediary representation to have disease biomarker features while imitating the confounding features of other groups.

Getting Started

See the Documentation.

Datasets

This may be used with either public benchmark datasets of brain images or internal hospital records, so long as they're represented as DICOM or NIFTI images. It was largely tested on ADNI and data internal to MGH. If they're represented as DICOM images, they are converted to NIFTI with metadata represented as a JSON file using dcm2niix. They may be further converted to NPY files, which are resized to a specific dimension, with the metadata represented in a pandas dataframe.

The MedImageLoader builds up this representation automatically, but it is space-intensive to do so.

Data may be represented with a folder structure.

.
└── control
    ├── 941_S_7051
    │   ├── Axial_3TE_T2_STAR
    │   │   └── 2022-03-07_11_03_03.0
    │   │       ├── I1553008
    │   │       │   ├── I1553008_Axial_3TE_T2_STAR_20220307110304_5_e3_ph.json
    │   │       │   └── I1553008_Axial_3TE_T2_STAR_20220307110304_5_e3_ph.nii.gz
    │   │       └── I1553014
    │   │           ├── I1553014_Axial_3TE_T2_STAR_20220307110304_5_ph.json
    │   │           └── I1553014_Axial_3TE_T2_STAR_20220307110304_5_ph.nii.gz
    │   ├── HighResHippocampus
    │   │   └── 2022-03-07_11_03_03.0
    │   │       └── I1553013
    │   │           ├── I1553013_HighResHippocampus_20220307110304_11.json
    │   │           └── I1553013_HighResHippocampus_20220307110304_11.nii.gz
    │   └── Sagittal_3D_FLAIR
    │       └── 2022-03-07_11_03_03.0
    │           └── I1553012
    │               ├── I1553012_Sagittal_3D_FLAIR_20220307110304_3.json
    │               └── I1553012_Sagittal_3D_FLAIR_20220307110304_3.nii.gz
    └── 941_S_7087
        ├── Axial_3D_PASL__Eyes_Open_
        │   └── 2022-06-15_14_38_03.0
        │       └── I1591322
        │           ├── I1591322_Axial_3D_PASL_(Eyes_Open)_20220615143803_6.json
        │           └── I1591322_Axial_3D_PASL_(Eyes_Open)_20220615143803_6.nii.gz
        └── Perfusion_Weighted
            └── 2022-06-15_14_38_03.0
                └── I1591323
                    ├── I1591323_Axial_3D_PASL_(Eyes_Open)_20220615143803_7.json
                    └── I1591323_Axial_3D_PASL_(Eyes_Open)_20220615143803_7.nii.gz

In the case of the above folder structure, "/path/to/control" may simply be input into the MedImageLoader function. For multiple labels, "/path/to/test", "/path/to/test2", and so on, may also be input.

Labels and Confounds

MIMIM enables for the representation of labels to classify by and confounds to regress. Confounds are represented as strings and labels can be represented as either strings or the input folder structure to MedImageLoader.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

multi_med_image_ml-0.0.21.tar.gz (3.4 MB view details)

Uploaded Source

Built Distribution

multi_med_image_ml-0.0.21-py3-none-any.whl (48.9 kB view details)

Uploaded Python 3

File details

Details for the file multi_med_image_ml-0.0.21.tar.gz.

File metadata

  • Download URL: multi_med_image_ml-0.0.21.tar.gz
  • Upload date:
  • Size: 3.4 MB
  • Tags: Source
  • Uploaded using Trusted Publishing? Yes
  • Uploaded via: twine/5.0.0 CPython/3.12.4

File hashes

Hashes for multi_med_image_ml-0.0.21.tar.gz
Algorithm Hash digest
SHA256 fe3cdc0605ec18deb6a6bfeefb3c1231a973fa30d8b27a01941786e7e666c257
MD5 e84d934e4cbfc2af2cde635c3ea22904
BLAKE2b-256 06771b594dd2f034815f2bc4d1707f5d9dae4f0b29695c6bb50d12b8adf08192

See more details on using hashes here.

File details

Details for the file multi_med_image_ml-0.0.21-py3-none-any.whl.

File metadata

File hashes

Hashes for multi_med_image_ml-0.0.21-py3-none-any.whl
Algorithm Hash digest
SHA256 be66985f9ca657416771105d11ec53110bedb0321ea5f106a52cee0d25c7f452
MD5 95d720ccf8f64aa6ff31ec76bb7ad771
BLAKE2b-256 3b26e1167ac7a46fd583fda74d74e7823754486465f4c03f0f2ccba58ca2fdbf

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page