Unsupervised Acute Intracranial Hemorrhage Segmentation with Mixture Models
Kimmo K\"arkk\"ainen, Shayan Fazeli, Majid Sarrafzadeh

TL;DR
This paper introduces a fully-unsupervised mixture model-based algorithm for rapid intracranial hemorrhage segmentation in CT scans, overcoming data scarcity issues and outperforming previous methods across various hemorrhage types.
Contribution
The paper presents a novel unsupervised segmentation method using mixture models and adaptive cluster determination, eliminating the need for labeled training data.
Findings
Outperforms existing unsupervised algorithms in hemorrhage detection.
Effectively identifies all hemorrhage types in diverse sizes and intensities.
Adapts to different data distributions without supervision.
Abstract
Intracranial hemorrhage occurs when blood vessels rupture or leak within the brain tissue or elsewhere inside the skull. It can be caused by physical trauma or by various medical conditions and in many cases leads to death. The treatment must be started as soon as possible, and therefore the hemorrhage should be diagnosed accurately and quickly. The diagnosis is usually performed by a radiologist who analyses a Computed Tomography (CT) scan containing a large number of cross-sectional images throughout the brain. Analysing each image manually can be very time-consuming, but automated techniques can help speed up the process. While much of the recent research has focused on solving this problem by using supervised machine learning algorithms, publicly-available training data remains scarce due to privacy concerns. This problem can be alleviated by unsupervised algorithms. In this paper,…
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