Electromagnetic induction detection techniques for craniocerebral injury: A review

Journal Title: Progress in Medical Devices - Year 2023, Vol 1, Issue 1

Abstract

Assessing the severity and prognosis of patients with craniocerebral damage is a major research area in medicine since it is a prevalent clinical disease. Acute craniocerebral injury, a common traumatic condition, is often caused by traffic accidents, collisions, and falls in daily life. Secondary craniocerebral injury refers to symptoms such as brain edema and intracranial hemorrhage after acute craniocerebral injury, which will aggravate the injury. Secondary craniocerebral injury can be avoided by effective and timely treatment, and real-time detection of brain edema and intracranial hemorrhage by non-invasive medical imaging is a solution. Therefore, non-invasive medical imaging technology has recently emerged as a new area of study. A new imaging technology, namely the brain injury detection technology based on electromagnetic induction, has been discovered after years of research on non-invasive detection of brain injury. Initially, electromagnetic induction technology was widely used in metal nondestructive testing. The human body, as a conductor, also has electromagnetic induction, allowing this technology to be used on the human body. This study reviews the technologies for detecting electromagnetic induction in cases of craniocerebral damage, including induced current electrical impedance tomography, magneto-acoustic tomography, and eddy current damping sensors for detection and imaging.

Authors and Affiliations

Ruoyu Song, Tao Xu, Tingting Shi, Xinrui Gui, Rongguo Yan

Keywords

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  • EP ID EP750294
  • DOI 10.61189/729316upqdwc
  • Views 37
  • Downloads 0

How To Cite

Ruoyu Song, Tao Xu, Tingting Shi, Xinrui Gui, Rongguo Yan (2023). Electromagnetic induction detection techniques for craniocerebral injury: A review. Progress in Medical Devices, 1(1), -. https://europub.co.uk/articles/-A-750294