Test-time Adaptation with Calibration of Medical Image Classification Nets for Label Distribution Shift

07/02/2022
by   Wenao Ma, et al.
4

Class distribution plays an important role in learning deep classifiers. When the proportion of each class in the test set differs from the training set, the performance of classification nets usually degrades. Such a label distribution shift problem is common in medical diagnosis since the prevalence of disease vary over location and time. In this paper, we propose the first method to tackle label shift for medical image classification, which effectively adapt the model learned from a single training label distribution to arbitrary unknown test label distribution. Our approach innovates distribution calibration to learn multiple representative classifiers, which are capable of handling different one-dominating-class distributions. When given a test image, the diverse classifiers are dynamically aggregated via the consistency-driven test-time adaptation, to deal with the unknown test label distribution. We validate our method on two important medical image classification tasks including liver fibrosis staging and COVID-19 severity prediction. Our experiments clearly show the decreased model performance under label shift. With our method, model performance significantly improves on all the test datasets with different label shifts for both medical image diagnosis tasks.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/15/2021

Out-of-Distribution Detection for Dermoscopic Image Classification

Medical image diagnosis can be achieved by deep neural networks, provide...
research
06/12/2020

HMIC: Hierarchical Medical Image Classification, A Deep Learning Approach

Image classification is central to the big data revolution in medicine. ...
research
02/12/2018

Detecting and Correcting for Label Shift with Black Box Predictors

Faced with distribution shift between training and test set, we wish to ...
research
06/22/2021

The Hitchhiker's Guide to Prior-Shift Adaptation

In many computer vision classification tasks, class priors at test time ...
research
03/22/2023

Deployment of Image Analysis Algorithms under Prevalence Shifts

Domain gaps are among the most relevant roadblocks in the clinical trans...
research
08/14/2023

Robustness Stress Testing in Medical Image Classification

Deep neural networks have shown impressive performance for image-based d...
research
09/11/2021

Co-Correcting: Noise-tolerant Medical Image Classification via mutual Label Correction

With the development of deep learning, medical image classification has ...

Please sign up or login with your details

Forgot password? Click here to reset