Saved in:
Bibliographic Details
Main Authors: Pal, Basudha, Kamran, Sharif Amit, Lutnick, Brendon, Lucas, Molly, Parmar, Chaitanya, Shah, Asha Patel, Apfel, David, Fakharzadeh, Steven, Miller, Lloyd, Cula, Gabriela, Standish, Kristopher
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2506.21883
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866913914871087104
author Pal, Basudha
Kamran, Sharif Amit
Lutnick, Brendon
Lucas, Molly
Parmar, Chaitanya
Shah, Asha Patel
Apfel, David
Fakharzadeh, Steven
Miller, Lloyd
Cula, Gabriela
Standish, Kristopher
author_facet Pal, Basudha
Kamran, Sharif Amit
Lutnick, Brendon
Lucas, Molly
Parmar, Chaitanya
Shah, Asha Patel
Apfel, David
Fakharzadeh, Steven
Miller, Lloyd
Cula, Gabriela
Standish, Kristopher
contents Psoriasis (PsO) severity scoring is important for clinical trials but is hindered by inter-rater variability and the burden of in person clinical evaluation. Remote imaging using patient captured mobile photos offers scalability but introduces challenges, such as variation in lighting, background, and device quality that are often imperceptible to humans but can impact model performance. These factors, along with inconsistencies in dermatologist annotations, reduce the reliability of automated severity scoring. We propose a framework to automatically flag problematic training images that introduce spurious correlations which degrade model generalization, using a gradient based interpretability approach. By tracing the gradients of misclassified validation images, we detect training samples where model errors align with inconsistently rated examples or are affected by subtle, nonclinical artifacts. We apply this method to a ConvNeXT based weakly supervised model designed to classify PsO severity from phone images. Removing 8.2% of flagged images improves model AUC-ROC by 5% (85% to 90%) on a held out test set. Commonly, multiple annotators and an adjudication process ensure annotation accuracy, which is expensive and time consuming. Our method detects training images with annotation inconsistencies, potentially removing the need for manual review. When applied to a subset of training data rated by two dermatologists, the method identifies over 90% of cases with inter-rater disagreement by reviewing only the top 30% of samples. This improves automated scoring for remote assessments, ensuring robustness despite data collection variability.
format Preprint
id arxiv_https___arxiv_org_abs_2506_21883
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle GRASP-PsONet: Gradient-based Removal of Spurious Patterns for PsOriasis Severity Classification
Pal, Basudha
Kamran, Sharif Amit
Lutnick, Brendon
Lucas, Molly
Parmar, Chaitanya
Shah, Asha Patel
Apfel, David
Fakharzadeh, Steven
Miller, Lloyd
Cula, Gabriela
Standish, Kristopher
Computer Vision and Pattern Recognition
Psoriasis (PsO) severity scoring is important for clinical trials but is hindered by inter-rater variability and the burden of in person clinical evaluation. Remote imaging using patient captured mobile photos offers scalability but introduces challenges, such as variation in lighting, background, and device quality that are often imperceptible to humans but can impact model performance. These factors, along with inconsistencies in dermatologist annotations, reduce the reliability of automated severity scoring. We propose a framework to automatically flag problematic training images that introduce spurious correlations which degrade model generalization, using a gradient based interpretability approach. By tracing the gradients of misclassified validation images, we detect training samples where model errors align with inconsistently rated examples or are affected by subtle, nonclinical artifacts. We apply this method to a ConvNeXT based weakly supervised model designed to classify PsO severity from phone images. Removing 8.2% of flagged images improves model AUC-ROC by 5% (85% to 90%) on a held out test set. Commonly, multiple annotators and an adjudication process ensure annotation accuracy, which is expensive and time consuming. Our method detects training images with annotation inconsistencies, potentially removing the need for manual review. When applied to a subset of training data rated by two dermatologists, the method identifies over 90% of cases with inter-rater disagreement by reviewing only the top 30% of samples. This improves automated scoring for remote assessments, ensuring robustness despite data collection variability.
title GRASP-PsONet: Gradient-based Removal of Spurious Patterns for PsOriasis Severity Classification
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2506.21883