IVCVLGAug 27, 2019

Embracing Imperfect Datasets: A Review of Deep Learning Solutions for Medical Image Segmentation

arXiv:1908.10454v2974 citations
AI Analysis

This is a survey article that increases awareness of techniques for handling imperfect datasets in medical imaging, which is incremental as it compiles existing research.

The paper reviews deep learning solutions for medical image segmentation when datasets are imperfect, addressing scarce or weak annotations, and summarizes technical approaches and empirical results.

The medical imaging literature has witnessed remarkable progress in high-performing segmentation models based on convolutional neural networks. Despite the new performance highs, the recent advanced segmentation models still require large, representative, and high quality annotated datasets. However, rarely do we have a perfect training dataset, particularly in the field of medical imaging, where data and annotations are both expensive to acquire. Recently, a large body of research has studied the problem of medical image segmentation with imperfect datasets, tackling two major dataset limitations: scarce annotations where only limited annotated data is available for training, and weak annotations where the training data has only sparse annotations, noisy annotations, or image-level annotations. In this article, we provide a detailed review of the solutions above, summarizing both the technical novelties and empirical results. We further compare the benefits and requirements of the surveyed methodologies and provide our recommended solutions. We hope this survey article increases the community awareness of the techniques that are available to handle imperfect medical image segmentation datasets.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes