Deep Supervised Information Bottleneck Hashing for Cross-modal Retrieval
based Computer-aided Diagnosis
- URL: http://arxiv.org/abs/2205.08365v1
- Date: Fri, 6 May 2022 11:43:17 GMT
- Title: Deep Supervised Information Bottleneck Hashing for Cross-modal Retrieval
based Computer-aided Diagnosis
- Authors: Yufeng Shi, Shuhuang Chen, Xinge You, Qinmu Peng, Weihua Ou, Yue Zhao
- Abstract summary: We propose Deep Supervised Information Bottleneck Hashing (DSIBH), which effectively strengthens the discriminability of hash codes.
Benefit from this, the superfluous information is reduced, which facilitates the discriminability of hash codes.
Experimental results demonstrate the superior accuracy of the proposed DSIBH compared with state-of-the-arts in cross-modal medical data retrieval tasks.
- Score: 17.0847996323416
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Mapping X-ray images, radiology reports, and other medical data as binary
codes in the common space, which can assist clinicians to retrieve
pathology-related data from heterogeneous modalities (i.e., hashing-based
cross-modal medical data retrieval), provides a new view to promot
computeraided diagnosis. Nevertheless, there remains a barrier to boost medical
retrieval accuracy: how to reveal the ambiguous semantics of medical data
without the distraction of superfluous information. To circumvent this
drawback, we propose Deep Supervised Information Bottleneck Hashing (DSIBH),
which effectively strengthens the discriminability of hash codes. Specifically,
the Deep Deterministic Information Bottleneck (Yu, Yu, and Principe 2021) for
single modality is extended to the cross-modal scenario. Benefiting from this,
the superfluous information is reduced, which facilitates the discriminability
of hash codes. Experimental results demonstrate the superior accuracy of the
proposed DSIBH compared with state-of-the-arts in cross-modal medical data
retrieval tasks.
Related papers
- Multi-Omics Fusion with Soft Labeling for Enhanced Prediction of Distant Metastasis in Nasopharyngeal Carcinoma Patients after Radiotherapy [4.971538849792411]
One of the challenges encountered in the integration of omics data is the presence of unpredictability.
This study aims to develop a fusion methodology that mitigates the disparities inherent in omics data.
arXiv Detail & Related papers (2025-02-12T05:26:59Z) - FEDMEKI: A Benchmark for Scaling Medical Foundation Models via Federated Knowledge Injection [83.54960238236548]
FEDMEKI not only preserves data privacy but also enhances the capability of medical foundation models.
FEDMEKI allows medical foundation models to learn from a broader spectrum of medical knowledge without direct data exposure.
arXiv Detail & Related papers (2024-08-17T15:18:56Z) - EndoOOD: Uncertainty-aware Out-of-distribution Detection in Capsule
Endoscopy Diagnosis [11.82953216903558]
Wireless capsule endoscopy (WCE) is a non-invasive diagnostic procedure that enables visualization of the gastrointestinal (GI) tract.
Deep learning-based methods have shown effectiveness in disease screening using WCE data.
Existing capsule endoscopy classification methods mostly rely on pre-defined categories.
arXiv Detail & Related papers (2024-02-18T06:54:51Z) - XAI for In-hospital Mortality Prediction via Multimodal ICU Data [57.73357047856416]
We propose an efficient, explainable AI solution for predicting in-hospital mortality via multimodal ICU data.
We employ multimodal learning in our framework, which can receive heterogeneous inputs from clinical data and make decisions.
Our framework can be easily transferred to other clinical tasks, which facilitates the discovery of crucial factors in healthcare research.
arXiv Detail & Related papers (2023-12-29T14:28:04Z) - Dynamic Multimodal Information Bottleneck for Multimodality
Classification [26.65073424377933]
We propose a dynamic multimodal information bottleneck framework for attaining a robust fused feature representation.
Specifically, our information bottleneck module serves to filter out the task-irrelevant information and noises in the fused feature.
Our method surpasses the state-of-the-art and is significantly more robust, being the only method to remain performance when large-scale noisy channels exist.
arXiv Detail & Related papers (2023-11-02T08:34:08Z) - ArSDM: Colonoscopy Images Synthesis with Adaptive Refinement Semantic
Diffusion Models [69.9178140563928]
Colonoscopy analysis is essential for assisting clinical diagnosis and treatment.
The scarcity of annotated data limits the effectiveness and generalization of existing methods.
We propose an Adaptive Refinement Semantic Diffusion Model (ArSDM) to generate colonoscopy images that benefit the downstream tasks.
arXiv Detail & Related papers (2023-09-03T07:55:46Z) - MMLN: Leveraging Domain Knowledge for Multimodal Diagnosis [10.133715767542386]
We propose a knowledge-driven and data-driven framework for lung disease diagnosis.
We formulate diagnosis rules according to authoritative clinical medicine guidelines and learn the weights of rules from text data.
A multimodal fusion consisting of text and image data is designed to infer the marginal probability of lung disease.
arXiv Detail & Related papers (2022-02-09T04:12:30Z) - Cross-Modality Deep Feature Learning for Brain Tumor Segmentation [158.8192041981564]
This paper proposes a novel cross-modality deep feature learning framework to segment brain tumors from the multi-modality MRI data.
The core idea is to mine rich patterns across the multi-modality data to make up for the insufficient data scale.
Comprehensive experiments are conducted on the BraTS benchmarks, which show that the proposed cross-modality deep feature learning framework can effectively improve the brain tumor segmentation performance.
arXiv Detail & Related papers (2022-01-07T07:46:01Z) - Information Bottleneck Attribution for Visual Explanations of Diagnosis
and Prognosis [8.325727554619325]
We introduce a robust visual explanation method to address this problem for medical applications.
Inspired by the information bottleneck concept, we mask the neural network representation with noise to find out important regions.
arXiv Detail & Related papers (2021-04-07T02:43:52Z) - Inheritance-guided Hierarchical Assignment for Clinical Automatic
Diagnosis [50.15205065710629]
Clinical diagnosis, which aims to assign diagnosis codes for a patient based on the clinical note, plays an essential role in clinical decision-making.
We propose a novel framework to combine the inheritance-guided hierarchical assignment and co-occurrence graph propagation for clinical automatic diagnosis.
arXiv Detail & Related papers (2021-01-27T13:16:51Z) - Learning Invariant Feature Representation to Improve Generalization
across Chest X-ray Datasets [55.06983249986729]
We show that a deep learning model performing well when tested on the same dataset as training data starts to perform poorly when it is tested on a dataset from a different source.
By employing an adversarial training strategy, we show that a network can be forced to learn a source-invariant representation.
arXiv Detail & Related papers (2020-08-04T07:41:15Z)
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.