CVCYDLLGFeb 9, 2024

Copycats: the many lives of a publicly available medical imaging dataset

arXiv:2402.06353v39 citationsh-index: 27NIPS
Originality Synthesis-oriented
AI Analysis

It addresses data governance problems in healthcare AI, highlighting risks from poor dataset management, but is incremental as it builds on existing curation efforts.

The paper analyzed publicly available medical imaging datasets on community-contributed platforms, finding issues like vague licenses, duplicates, and missing metadata that undermine data quality and recommended practices.

Medical Imaging (MI) datasets are fundamental to artificial intelligence in healthcare. The accuracy, robustness, and fairness of diagnostic algorithms depend on the data (and its quality) used to train and evaluate the models. MI datasets used to be proprietary, but have become increasingly available to the public, including on community-contributed platforms (CCPs) like Kaggle or HuggingFace. While open data is important to enhance the redistribution of data's public value, we find that the current CCP governance model fails to uphold the quality needed and recommended practices for sharing, documenting, and evaluating datasets. In this paper, we conduct an analysis of publicly available machine learning datasets on CCPs, discussing datasets' context, and identifying limitations and gaps in the current CCP landscape. We highlight differences between MI and computer vision datasets, particularly in the potentially harmful downstream effects from poor adoption of recommended dataset management practices. We compare the analyzed datasets across several dimensions, including data sharing, data documentation, and maintenance. We find vague licenses, lack of persistent identifiers and storage, duplicates, and missing metadata, with differences between the platforms. Our research contributes to efforts in responsible data curation and AI algorithms for healthcare.

Foundations

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

Your Notes