Smile-GANs: Semi-supervised clustering via GANs for dissecting brain
disease heterogeneity from medical images
- URL: http://arxiv.org/abs/2006.15255v1
- Date: Sat, 27 Jun 2020 02:06:21 GMT
- Title: Smile-GANs: Semi-supervised clustering via GANs for dissecting brain
disease heterogeneity from medical images
- Authors: Zhijian Yang, Junhao Wen, Christos Davatzikos
- Abstract summary: We propose Smile-GANs (SeMi-supervIsed cLustEring via GANs), for semi-supervised clustering, and apply it to brain MRI scans.
Smile-GANs first learns multiple distinct mappings by generating PT from CN, with each mapping characterizing one relatively distinct pathological pattern.
Using relaxed assumptions on PT/CN data distribution and imposing mapping non-linearity, Smile-GANs captures heterogeneous differences in distribution between the CN and PT domains.
- Score: 4.965264481651854
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Machine learning methods applied to complex biomedical data has enabled the
construction of disease signatures of diagnostic/prognostic value. However,
less attention has been given to understanding disease heterogeneity.
Semi-supervised clustering methods can address this problem by estimating
multiple transformations from a (e.g. healthy) control (CN) group to a patient
(PT) group, seeking to capture the heterogeneity of underlying pathlogic
processes. Herein, we propose a novel method, Smile-GANs (SeMi-supervIsed
cLustEring via GANs), for semi-supervised clustering, and apply it to brain MRI
scans. Smile-GANs first learns multiple distinct mappings by generating PT from
CN, with each mapping characterizing one relatively distinct pathological
pattern. Moreover, a clustering model is trained interactively with mapping
functions to assign PT into corresponding subtype memberships. Using relaxed
assumptions on PT/CN data distribution and imposing mapping non-linearity,
Smile-GANs captures heterogeneous differences in distribution between the CN
and PT domains. We first validate Smile-GANs using simulated data, subsequently
on real data, by demonstrating its potential in characterizing heterogeneity in
Alzheimer's Disease (AD) and its prodromal phases. The model was first trained
using baseline MRIs from the ADNI2 database and then applied to longitudinal
data from ADNI1 and BLSA. Four robust subtypes with distinct neuroanatomical
patterns were discovered: 1) normal brain, 2) diffuse atrophy atypical of AD,
3) focal medial temporal lobe atrophy, 4) typical-AD. Further longitudinal
analyses discover two distinct progressive pathways from prodromal to full AD:
i) subtypes 1 - 2 - 4, and ii) subtypes 1 - 3 - 4. Although demonstrated on an
important biomedical problem, Smile-GANs is general and can find application in
many biomedical and other domains.
Related papers
- Clustering Alzheimer's Disease Subtypes via Similarity Learning and Graph Diffusion [14.536841566365048]
Alzheimer's disease (AD) is a complex neurodegenerative disorder that affects millions of people worldwide.
In this study, we aim to identify subtypes of AD that represent distinctive clinical features and underlying pathology.
arXiv Detail & Related papers (2024-10-04T21:38:14Z) - Single-Cell Deep Clustering Method Assisted by Exogenous Gene
Information: A Novel Approach to Identifying Cell Types [50.55583697209676]
We develop an attention-enhanced graph autoencoder, which is designed to efficiently capture the topological features between cells.
During the clustering process, we integrated both sets of information and reconstructed the features of both cells and genes to generate a discriminative representation.
This research offers enhanced insights into the characteristics and distribution of cells, thereby laying the groundwork for early diagnosis and treatment of diseases.
arXiv Detail & Related papers (2023-11-28T09:14:55Z) - S3M: Scalable Statistical Shape Modeling through Unsupervised
Correspondences [91.48841778012782]
We propose an unsupervised method to simultaneously learn local and global shape structures across population anatomies.
Our pipeline significantly improves unsupervised correspondence estimation for SSMs compared to baseline methods.
Our method is robust enough to learn from noisy neural network predictions, potentially enabling scaling SSMs to larger patient populations.
arXiv Detail & Related papers (2023-04-15T09:39:52Z) - Pathology Steered Stratification Network for Subtype Identification in
Alzheimer's Disease [7.594681424335177]
Alzheimers disease (AD) is a heterogeneous, multitemporal neurodegenerative disorder characterized by beta-amyloid, pathologic tau, and neurodegeneration.
We propose a novel pathology steered stratification network (PSSN) that incorporates established domain knowledge in AD pathology through a reaction-diffusion model.
arXiv Detail & Related papers (2022-10-12T02:52:00Z) - Surreal-GAN:Semi-Supervised Representation Learning via GAN for
uncovering heterogeneous disease-related imaging patterns [4.965264481651854]
We propose Surreal-GAN (Semi-SUpeRvised ReprEsentAtion Learning via GAN) to model disease effects.
We validated the model through extensive semi-synthetic experiments, and then demonstrate its potential in capturing biologically plausible imaging patterns in Alzheimer's disease.
arXiv Detail & Related papers (2022-05-09T19:09:28Z) - Two-Stream Graph Convolutional Network for Intra-oral Scanner Image
Segmentation [133.02190910009384]
We propose a two-stream graph convolutional network (i.e., TSGCN) to handle inter-view confusion between different raw attributes.
Our TSGCN significantly outperforms state-of-the-art methods in 3D tooth (surface) segmentation.
arXiv Detail & Related papers (2022-04-19T10:41:09Z) - Morphological feature visualization of Alzheimer's disease via
Multidirectional Perception GAN [40.50404819220093]
A novel Multidirectional Perception Generative Adversarial Network (MP-GAN) is proposed to visualize the morphological features indicating the severity of Alzheimer's disease (AD)
MP-GAN achieves superior performance compared with the existing methods.
arXiv Detail & Related papers (2021-11-25T03:24:52Z) - Modality Completion via Gaussian Process Prior Variational Autoencoders
for Multi-Modal Glioma Segmentation [75.58395328700821]
We propose a novel model, Multi-modal Gaussian Process Prior Variational Autoencoder (MGP-VAE), to impute one or more missing sub-modalities for a patient scan.
MGP-VAE can leverage the Gaussian Process (GP) prior on the Variational Autoencoder (VAE) to utilize the subjects/patients and sub-modalities correlations.
We show the applicability of MGP-VAE on brain tumor segmentation where either, two, or three of four sub-modalities may be missing.
arXiv Detail & Related papers (2021-07-07T19:06:34Z) - Cross-Modality Brain Tumor Segmentation via Bidirectional
Global-to-Local Unsupervised Domain Adaptation [61.01704175938995]
In this paper, we propose a novel Bidirectional Global-to-Local (BiGL) adaptation framework under a UDA scheme.
Specifically, a bidirectional image synthesis and segmentation module is proposed to segment the brain tumor.
The proposed method outperforms several state-of-the-art unsupervised domain adaptation methods by a large margin.
arXiv Detail & Related papers (2021-05-17T10:11:45Z) - G-MIND: An End-to-End Multimodal Imaging-Genetics Framework for
Biomarker Identification and Disease Classification [49.53651166356737]
We propose a novel deep neural network architecture to integrate imaging and genetics data, as guided by diagnosis, that provides interpretable biomarkers.
We have evaluated our model on a population study of schizophrenia that includes two functional MRI (fMRI) paradigms and Single Nucleotide Polymorphism (SNP) data.
arXiv Detail & Related papers (2021-01-27T19:28:04Z) - MAGIC: Multi-scale Heterogeneity Analysis and Clustering for Brain
Diseases [3.955454029331185]
We introduce a novel method, MAGIC, to uncover disease heterogeneity by leveraging multi-scale clustering.
We validate MAGIC using simulated heterogeneous neuroanatomical data and demonstrate its clinical potential by exploring the heterogeneity of Alzheimers Disease (AD)
Our results indicate two main subtypes of AD with distinct atrophy patterns that consist of both fine-scale atrophy in the hippocampus as well as large-scale atrophy in cortical regions.
arXiv Detail & Related papers (2020-07-01T23:42:37Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.