CVIVSep 24, 2022

DomainATM: Domain Adaptation Toolbox for Medical Data Analysis

arXiv:2209.11890v119 citationsh-index: 43Has Code
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This provides a practical tool for researchers in medical data analysis to easily apply and test domain adaptation methods, though it is incremental as it packages existing algorithms.

The authors developed DomainATM, an open-source MATLAB toolbox with a graphical interface to facilitate domain adaptation methods for medical data analysis, enabling fast feature-level and image-level adaptation, visualization, and performance evaluation, as demonstrated in three example experiments.

Domain adaptation (DA) is an important technique for modern machine learning-based medical data analysis, which aims at reducing distribution differences between different medical datasets. A proper domain adaptation method can significantly enhance the statistical power by pooling data acquired from multiple sites/centers. To this end, we have developed the Domain Adaptation Toolbox for Medical data analysis (DomainATM) - an open-source software package designed for fast facilitation and easy customization of domain adaptation methods for medical data analysis. The DomainATM is implemented in MATLAB with a user-friendly graphical interface, and it consists of a collection of popular data adaptation algorithms that have been extensively applied to medical image analysis and computer vision. With DomainATM, researchers are able to facilitate fast feature-level and image-level adaptation, visualization and performance evaluation of different adaptation methods for medical data analysis. More importantly, the DomainATM enables the users to develop and test their own adaptation methods through scripting, greatly enhancing its utility and extensibility. An overview characteristic and usage of DomainATM is presented and illustrated with three example experiments, demonstrating its effectiveness, simplicity, and flexibility. The software, source code, and manual are available online.

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