Functional Principal Component Analysis and Randomized Sparse Clustering Algorithm for Medical Image Analysis

08/01/2014
by   Nan Lin, et al.
0

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 or no useful information for cluster analysis. Widely used methods for removing redundant and irrelevant features are sparse clustering algorithms using a lasso-type penalty to select the features. However, the accuracy of clustering using a lasso-type penalty depends on how to select penalty parameters and a threshold for selecting features. In practice, they are difficult to determine. Recently, randomized algorithms have received a great deal of attention in big data analysis. This paper presents a randomized algorithm for accurate feature selection in image cluster analysis. The proposed method is applied to ovarian and kidney cancer histology image data from the TCGA database. The results demonstrate that the randomized feature selection method coupled with functional principal component analysis substantially outperforms the current sparse clustering algorithms in image cluster analysis.

READ FULL TEXT

page 36

page 37

research
10/15/2020

Multi-feature Clustering of Step Data using Multivariate Functional Principal Component Analysis

This paper presents a new statistical method for clustering step data, a...
research
09/16/2021

Sparse logistic functional principal component analysis for binary data

Functional binary datasets occur frequently in real practice, whereas di...
research
11/22/2022

Factor-guided functional PCA for high-dimensional functional data

The literature on high-dimensional functional data focuses on either the...
research
06/24/2022

Deep embedded clustering algorithm for clustering PACS repositories

Creating large datasets of medical radiology images from several sources...
research
12/08/2021

Dynamic multi feature-class Gaussian process models

In model-based medical image analysis, three features of interest are th...
research
09/22/2021

Functional Data Analysis for Extracting the Intrinsic Dimensionality of Spectra – Application: Chemical Homogeneity in Open Cluster M67

High-resolution spectroscopic surveys of the Milky Way have entered the ...
research
12/03/2017

Triagem virtual de imagens de imuno-histoquímica usando redes neurais artificiais e espectro de padrões

The importance of organizing medical images according to their nature, a...

Please sign up or login with your details

Forgot password? Click here to reset