Improving MRI-based analysis of brain structural changes in patients with hypertension via a privileged information learning algorithm

•The proposed algorithm can help analyze the brain structural changes of hypertension patients.•Multiple types of features are extracted to train model.•LUPI improves the classification performance and optimizes the speed of diagnosis.•Using multi-kernel KRR can provide more information train a more...

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Veröffentlicht in:Methods (San Diego, Calif.) Calif.), 2022-06, Vol.202, p.103-109
Hauptverfasser: Peng, Bo, Yu, Xinying, Ma, Xinwei, Xue, Zeyu, Wang, Jingyu, Cai, Zenglin, Pang, Chunying, Zhu, Jianbing, Dai, Yakang
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Sprache:eng
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Zusammenfassung:•The proposed algorithm can help analyze the brain structural changes of hypertension patients.•Multiple types of features are extracted to train model.•LUPI improves the classification performance and optimizes the speed of diagnosis.•Using multi-kernel KRR can provide more information train a more effective model.•SPL optimizes the training process by gradually adopting samples classifier from easy to difficult.•A better control of blood pressure in the early stage can reduce the impact on brain injury. Hypertension can lead to changes in the brain structure and function, and different blood pressure levels (2017ACC/AHA) have different effects on brain structure. It is important to analyze these changes by machine learning methods, and various characteristics can provide rich information for the analysis of these changes. However, multiple feature extraction involves complex data processing. How to make a single feature achieve the same diagnosis effect as multiple features do is worth of study. Kernel ridge regression (KRR) is a kind of machine learning method, which shows faster learning speed and generalization ability in classification tasks. In order to knowledge transfer, we use privileged information (PI) to transfer information of multiple types of feature to single feature. This allows only one feature type to be used during the test stage. In the process of feature fusion, we need to consider all the samples’ attribution making the classifier better. In this work, we propose a multi-kernel KRR+ framework based on self-paced learning to analyze the changes of the brain structure in patients with different blood pressure levels. Specifically, one kind of a feature is taken as main feature, and other features are input into the multi-kernel KRR as PI. These two inputs are fed into the final KRR classifier together. In addition, a self-paced learning method is introduced into sample selecting to avoid training the classifier using samples with a large loss value firstly, which improves the generalization performance of the classifier. Experimental results show that the proposed method can make full use of the information of various features and achieve better classification performance. This shows self-paced learning based KRR can help analyze brain structure of patients with different blood pressure levels. The discriminative features may help clinicians to make judgments of hypertension degrees on brain MRI images.
ISSN:1046-2023
1095-9130
DOI:10.1016/j.ymeth.2021.07.004