Calibrate the inter-observer segmentation uncertainty via
diagnosis-first principle
- URL: http://arxiv.org/abs/2208.03016v1
- Date: Fri, 5 Aug 2022 07:12:24 GMT
- Title: Calibrate the inter-observer segmentation uncertainty via
diagnosis-first principle
- Authors: Junde Wu, Huihui Fang, Hoayi Xiong, Lixin Duan, Mingkui Tan, Weihua
Yang, Huiying Liu, Yanwu Xu
- Abstract summary: We propose diagnosis-first principle, which is to take disease diagnosis as the criterion to calibrate the inter-observer segmentation uncertainty.
We dubbed the fused ground-truth as Diagnosis First Ground-truth (DF-GT).Then, we further propose Take and Give Modelto segment DF-GT from the raw image.
Experimental results show that the proposed DiFF is able to significantly facilitate the corresponding disease diagnosis.
- Score: 45.29954184893812
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: On the medical images, many of the tissues/lesions may be ambiguous. That is
why the medical segmentation is typically annotated by a group of clinical
experts to mitigate the personal bias. However, this clinical routine also
brings new challenges to the application of machine learning algorithms.
Without a definite ground-truth, it will be difficult to train and evaluate the
deep learning models. When the annotations are collected from different
graders, a common choice is majority vote. However such a strategy ignores the
difference between the grader expertness. In this paper, we consider the task
of predicting the segmentation with the calibrated inter-observer uncertainty.
We note that in clinical practice, the medical image segmentation is usually
used to assist the disease diagnosis. Inspired by this observation, we propose
diagnosis-first principle, which is to take disease diagnosis as the criterion
to calibrate the inter-observer segmentation uncertainty. Following this idea,
a framework named Diagnosis First segmentation Framework (DiFF) is proposed to
estimate diagnosis-first segmentation from the raw images.Specifically, DiFF
will first learn to fuse the multi-rater segmentation labels to a single
ground-truth which could maximize the disease diagnosis performance. We dubbed
the fused ground-truth as Diagnosis First Ground-truth (DF-GT).Then, we further
propose Take and Give Modelto segment DF-GT from the raw image. We verify the
effectiveness of DiFF on three different medical segmentation tasks: OD/OC
segmentation on fundus images, thyroid nodule segmentation on ultrasound
images, and skin lesion segmentation on dermoscopic images. Experimental
results show that the proposed DiFF is able to significantly facilitate the
corresponding disease diagnosis, which outperforms previous state-of-the-art
multi-rater learning methods.
Related papers
- COIN: Counterfactual inpainting for weakly supervised semantic segmentation for medical images [3.5418498524791766]
This research is development of a novel counterfactual inpainting approach (COIN)
COIN flips the predicted classification label from abnormal to normal by using a generative model.
The effectiveness of the method is demonstrated by segmenting synthetic targets and actual kidney tumors from CT images acquired from Tartu University Hospital in Estonia.
arXiv Detail & Related papers (2024-04-19T12:09:49Z) - MedIAnomaly: A comparative study of anomaly detection in medical images [26.319602363581442]
Anomaly detection (AD) aims at detecting abnormal samples that deviate from the expected normal patterns.
Despite numerous methods for medical AD, we observe a lack of a fair and comprehensive evaluation.
This paper builds a benchmark with unified comparison.
arXiv Detail & Related papers (2024-04-06T06:18:11Z) - Mining Gaze for Contrastive Learning toward Computer-Assisted Diagnosis [61.089776864520594]
We propose eye-tracking as an alternative to text reports for medical images.
By tracking the gaze of radiologists as they read and diagnose medical images, we can understand their visual attention and clinical reasoning.
We introduce the Medical contrastive Gaze Image Pre-training (McGIP) as a plug-and-play module for contrastive learning frameworks.
arXiv Detail & Related papers (2023-12-11T02:27:45Z) - Multi-task Explainable Skin Lesion Classification [54.76511683427566]
We propose a few-shot-based approach for skin lesions that generalizes well with few labelled data.
The proposed approach comprises a fusion of a segmentation network that acts as an attention module and classification network.
arXiv Detail & Related papers (2023-10-11T05:49:47Z) - Self-Supervised Correction Learning for Semi-Supervised Biomedical Image
Segmentation [84.58210297703714]
We propose a self-supervised correction learning paradigm for semi-supervised biomedical image segmentation.
We design a dual-task network, including a shared encoder and two independent decoders for segmentation and lesion region inpainting.
Experiments on three medical image segmentation datasets for different tasks demonstrate the outstanding performance of our method.
arXiv Detail & Related papers (2023-01-12T08:19:46Z) - SeATrans: Learning Segmentation-Assisted diagnosis model via Transforme [13.63128987400635]
We propose Vision-Assisted diagnosis Transformer (SeATrans) to transfer the segmentation knowledge to the disease diagnosis network.
We first propose an asymmetric multi-scale interaction strategy to correlate each single low-level diagnosis feature with multi-scale segmentation features.
To model the segmentation-diagnosis interaction, SeA-block first embeds the diagnosis feature based on the segmentation information via the encoder, and then transfers the embedding back to the diagnosis feature space by a decoder.
arXiv Detail & Related papers (2022-06-12T15:10:33Z) - Opinions Vary? Diagnosis First! [5.39322899965008]
In medical image segmentation, images are usually annotated by several different clinical experts.
Computer Vision models often assume there has a unique ground-truth for each of the instance.
We propose a framework taking the diagnosis result as the gold standard, to estimate the segmentation mask upon the multi-rater segmentation labels.
arXiv Detail & Related papers (2022-02-14T06:33:05Z) - SpineOne: A One-Stage Detection Framework for Degenerative Discs and
Vertebrae [54.751251046196494]
We propose a one-stage detection framework termed SpineOne to simultaneously localize and classify degenerative discs and vertebrae from MRI slices.
SpineOne is built upon the following three key techniques: 1) a new design of the keypoint heatmap to facilitate simultaneous keypoint localization and classification; 2) the use of attention modules to better differentiate the representations between discs and vertebrae; and 3) a novel gradient-guided objective association mechanism to associate multiple learning objectives at the later training stage.
arXiv Detail & Related papers (2021-10-28T12:59:06Z) - Explainable Disease Classification via weakly-supervised segmentation [4.154485485415009]
Deep learning approaches to Computer Aided Diagnosis (CAD) typically pose the problem as an image classification (Normal or Abnormal) problem.
This paper examines this problem and proposes an approach which mimics the clinical practice of looking for evidence prior to diagnosis.
The proposed solution is then adapted to Breast Cancer detection from mammographic images.
arXiv Detail & Related papers (2020-08-24T09:00:30Z) - Collaborative Unsupervised Domain Adaptation for Medical Image Diagnosis [102.40869566439514]
We seek to exploit rich labeled data from relevant domains to help the learning in the target task via Unsupervised Domain Adaptation (UDA)
Unlike most UDA methods that rely on clean labeled data or assume samples are equally transferable, we innovatively propose a Collaborative Unsupervised Domain Adaptation algorithm.
We theoretically analyze the generalization performance of the proposed method, and also empirically evaluate it on both medical and general images.
arXiv Detail & Related papers (2020-07-05T11:49:17Z)
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.