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Review of Machine Learning for Bioimpedance Tomography in Regenerative Medicine

Review of Machine Learning for Bioimpedance Tomography in Regenerative Medicine
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Author(s): Zhe Liu (University of Edinburgh, UK), Zhou Chen (University of Edinburgh, UK)and Yunjie Yang (University of Edinburgh, UK)
Copyright: 2023
Pages: 22
Source title: Diverse Perspectives and State-of-the-Art Approaches to the Utilization of Data-Driven Clinical Decision Support Systems
Source Author(s)/Editor(s): Thomas M. Connolly (DS Partnership, UK), Petros Papadopoulos (University of Strathclyde, UK)and Mario Soflano (Glasgow Caledonian University, UK)
DOI: 10.4018/978-1-6684-5092-5.ch013

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Abstract

Monitoring cell growth and activities is crucial for regenerative medicine. Although optical imaging can provide high resolution, such methods are limited by the penetration depth. Bioimpedance tomography is an alternative way as it can overcome the penetration problem and possess the advantages of non-radiative, non-destructive, and high temporal resolution. In addition, with the rapid development of machine leaning, learning-based bioimpedance tomography is gradually introduced into regenerative medicine and demonstrates powerful potential. This chapter aims to provide an overview of the state-of-the-art machine learning methods of bioimpedance tomography in regenerative medicine while offering perspectives for future research directions. This chapter first summarizes the electrical properties of tissues and the principle of electrical impedance tomography (EIT) then extensively reviews the recent progress on learning-based single-modal and multi-modal imaging methods of EIT for regenerative medicine. Finally, promising future research directions are discussed.

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