English

Knowledge-based anomaly detection for identifying network-induced shape artifacts

Computer Vision and Pattern Recognition 2025-11-10 v1 Artificial Intelligence

Abstract

Synthetic data provides a promising approach to address data scarcity for training machine learning models; however, adoption without proper quality assessments may introduce artifacts, distortions, and unrealistic features that compromise model performance and clinical utility. This work introduces a novel knowledge-based anomaly detection method for detecting network-induced shape artifacts in synthetic images. The introduced method utilizes a two-stage framework comprising (i) a novel feature extractor that constructs a specialized feature space by analyzing the per-image distribution of angle gradients along anatomical boundaries, and (ii) an isolation forest-based anomaly detector. We demonstrate the effectiveness of the method for identifying network-induced shape artifacts in two synthetic mammography datasets from models trained on CSAW-M and VinDr-Mammo patient datasets respectively. Quantitative evaluation shows that the method successfully concentrates artifacts in the most anomalous partition (1st percentile), with AUC values of 0.97 (CSAW-syn) and 0.91 (VMLO-syn). In addition, a reader study involving three imaging scientists confirmed that images identified by the method as containing network-induced shape artifacts were also flagged by human readers with mean agreement rates of 66% (CSAW-syn) and 68% (VMLO-syn) for the most anomalous partition, approximately 1.5-2 times higher than the least anomalous partition. Kendall-Tau correlations between algorithmic and human rankings were 0.45 and 0.43 for the two datasets, indicating reasonable agreement despite the challenging nature of subtle artifact detection. This method is a step forward in the responsible use of synthetic data, as it allows developers to evaluate synthetic images for known anatomic constraints and pinpoint and address specific issues to improve the overall quality of a synthetic dataset.

Keywords

Cite

@article{arxiv.2511.04729,
  title  = {Knowledge-based anomaly detection for identifying network-induced shape artifacts},
  author = {Rucha Deshpande and Tahsin Rahman and Miguel Lago and Adarsh Subbaswamy and Jana G. Delfino and Ghada Zamzmi and Elim Thompson and Aldo Badano and Seyed Kahaki},
  journal= {arXiv preprint arXiv:2511.04729},
  year   = {2025}
}

Comments

15 pages, 11 figures

R2 v1 2026-07-01T07:25:11.741Z