Functional Principal Component Analysis and Randomized Sparse Clustering Algorithm for Medical Image Analysis
Nan Lin, Junhai Jiang, Shicheng Guo, Momiao Xiong

TL;DR
This paper introduces a two-dimensional functional principal component analysis combined with a randomized feature selection algorithm to improve clustering accuracy in large-scale medical image data analysis.
Contribution
It extends functional PCA to 2D images and proposes a randomized feature selection method that outperforms existing sparse clustering techniques.
Findings
Enhanced clustering accuracy on cancer histology images
Effective reduction of irrelevant features in large image datasets
Superior performance compared to traditional sparse clustering methods
Abstract
Due to advances in sensors, growing large and complex medical image data have the ability to visualize the pathological change in the cellular or even the molecular level or anatomical changes in tissues and organs. As a consequence, the medical images have the potential to enhance diagnosis of disease, prediction of clinical outcomes, characterization of disease progression, management of health care and development of treatments, but also pose great methodological and computational challenges for representation and selection of features in image cluster analysis. To address these challenges, we first extend one dimensional functional principal component analysis to the two dimensional functional principle component analyses (2DFPCA) to fully capture space variation of image signals. Image signals contain a large number of redundant and irrelevant features which provide no additional…
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