Back to Search
Start Over
Outlier Detection using Self-Organizing Maps for Automated Blood Cell Analysis
- Publication Year :
- 2022
-
Abstract
- The quality of datasets plays a crucial role in the successful training and deployment of deep learning models. Especially in the medical field, where system performance may impact the health of patients, clean datasets are a safety requirement for reliable predictions. Therefore, outlier detection is an essential process when building autonomous clinical decision systems. In this work, we assess the suitability of Self-Organizing Maps for outlier detection specifically on a medical dataset containing quantitative phase images of white blood cells. We detect and evaluate outliers based on quantization errors and distance maps. Our findings confirm the suitability of Self-Organizing Maps for unsupervised Out-Of-Distribution detection on the dataset at hand. Self-Organizing Maps perform on par with a manually specified filter based on expert domain knowledge. Additionally, they show promise as a tool in the exploration and cleaning of medical datasets. As a direction for future research, we suggest a combination of Self-Organizing Maps and feature extraction based on deep learning.<br />Comment: Presented at the 2nd Workshop on Interpretable Machine Learning in Healthcare (IMLH) @ ICML 2022
Details
- Database :
- arXiv
- Publication Type :
- Report
- Accession number :
- edsarx.2208.08834
- Document Type :
- Working Paper