| Literature DB >> 35227324 |
Xi-Yang Ke1,2,3, Wei Hou1,2,3, Qi Huang4, Xue Hou1,2,3, Xue-Ying Bao1,2,3, Wei-Xuan Kong1,2, Cheng-Xiang Li1,2,3, Yu-Qi Qiu1,2,3, Si-Yi Hu5, Li-Hua Dong6,7,8.
Abstract
Novel advances in the field of brain imaging have enabled the unprecedented clinical application of various imaging modalities to facilitate disease diagnosis and treatment. Electrical impedance tomography (EIT) is a functional imaging technique that measures the transfer impedances between electrodes on the body surface to estimate the spatial distribution of electrical properties of tissues. EIT offers many advantages over other neuroimaging technologies, which has led to its potential clinical use. This qualitative review provides an overview of the basic principles, algorithms, and system composition of EIT. Recent advances in the field of EIT are discussed in the context of epilepsy, stroke, brain injuries and edema, and other brain diseases. Further, we summarize factors limiting the development of brain EIT and highlight prospects for the field. In epilepsy imaging, there have been advances in EIT imaging depth, from cortical to subcortical regions. In stroke research, a bedside EIT stroke monitoring system has been developed for clinical practice, and data support the role of EIT in multi-modal imaging for diagnosing stroke. Additionally, EIT has been applied to monitor the changes in brain water content associated with cerebral edema, enabling the early identification of brain edema and the evaluation of mannitol dehydration. However, anatomically realistic geometry, inhomogeneity, cranium completeness, anisotropy and skull type, etc., must be considered to improve the accuracy of EIT modeling. Thus, the further establishment of EIT as a mature and routine diagnostic technique will necessitate the accumulation of more supporting evidence.Entities:
Keywords: Brain diseases; Electrical impedance tomography (EIT); Microelectrode array; Tissue impedance
Mesh:
Year: 2022 PMID: 35227324 PMCID: PMC8883715 DOI: 10.1186/s40779-022-00370-7
Source DB: PubMed Journal: Mil Med Res ISSN: 2054-9369
Comparison of characteristics of brain imaging technologies
| Technique | Mechanism of operation | Cost | Wearable | Operability | Side effects | Precision |
|---|---|---|---|---|---|---|
| EIT | Electrical impedance in tissue | Low | Yes | Maneuverable | No | Low |
| fcPAT | Optical excitation and acoustic detection | Low | Yes | Maneuverable | No | High |
| EEG | Electrical activity of brain cells | Low | Yes | Maneuverable | No | Low |
| X-ray | Low energy X-rays | Moderate | No | Professional | Radiation | Moderate |
| CT | X-rays, computer processing and conversion | High | No | Professional | Radiation | High |
| MRI | Magnetic field and pulsating radio waves | High | No | Professional | Time-consuming | High |
| PET | Gamma rays emitted by tracer substance | High | No | Professional | Radiation | Moderate |
EIT electrical impedance tomography, fcPAT functional connectivity photoacoustic tomography, EEG electroencephalography, CT computed tomography, MRI magnetic resonance imaging, PET positron emission tomography
Fig. 1Typical composition of electrical impedance tomography (EIT) systems
Fig. 2Progress in EIT for epilepsy. a Impedance response in the cortex and thalamus was characterized during forepaw stimulation using a 57-channel electrode array placed on the cortex and a depth electrode placed in the VPL nucleus in the thalamus. EIT imaging was conducted in an attempt to image ascending neural activity from the thalamus to the cortex using epicortical electrodes. b Protocol that maximizes current density in the VPL was used for imaging experiments. c Average current density across injection pairs concentrated in a sagittal slice when using the protocol that maximizes current density in the VPL. The location of the VPL is highlighted in white. d Data collection and processing work flow. e Angular bundle of the perforant path was electrically stimulated with a 2-s train of 100 Hz biphasic square-wave pulses to induce seizures. Pulses were 1 ms in duration per phase and 1.5 mA in amplitude. f During each imaging protocol, transfer impedances were recorded by injecting current through a different electrode pair on the 54-electrode epicortical array for each of ≥ 30 seizures; locations of and the distance between current-injecting electrodes were varied to ensure adequate sampling of the cortex and hippocampus. A 12-min rest period between stimulation series ensured that seizures remained stable during imaging protocols. Adapted from [56, 57]. EIT electrical impedance tomography, VPL ventral posterolateral
Fig. 3Comparison of ex vivo and in vivo characterization of bioimpedance spectroscopy of normal, ischemic, and hemorrhagic brain tissue at frequencies of 10 Hz–1 MHz in rabbits. a, b Hemorrhagic model obtained with the autologous blood injection method and the ischemic model obtained with the photothrombotic method. c Schematic diagram. d Electrode distribution for in vivo measurement of whole-brain impedance spectra. e Intracerebral hemorrhage model (autologous blood injection method) and ischemic model (photochemical induction method). Adapted from [86, 87]
Fig. 4Brain tissue changes at different phases of cerebral edema. At an early stage of cerebral edema, cellular expansion reduces the intercellular space which decreases electrical current density through tissue under the same excitation, thus increasing tissue impedance. Subsequently, necrotic or ruptured neurocytes enhance cellular membrane permeability. At this stage, electrical current easily passes through brain tissue, which results in a further reduction in tissue impedance. Adapted from [96]
Brain disease impedance spectra
| Disease | Model/species | Trends of impedance changes |
|---|---|---|
| Epilepsy | In vivo/rat | Impedance decreased gradually during a seizure and reached a minimum at the end of the seizure. Following seizure activity, the impedance returned to the interictal baseline or increased to a level above the baseline |
| Stroke | Ex vivo/rabbit In vivo/rabbit | Impedance spectra of stroke lesions significantly differed to those of normal brain tissue; the ratio of change in impedance of ischemic and hemorrhagic tissue with regard to frequency was distinct; tissue type could be distinguished according to impedance spectra |
| Brain injuries and cerebral edema | 23 patients with brain edema | Overall impedance across the brain increased significantly before and after mannitol dehydration treatment ( |
| Ex vivo/male rats | After the first 6 h following the onset of ischemic brain injury, the resistivity of brain tissue increased ( | |
| Patients with cerebral hemorrhage | Dehydration effects induced changes in average reconstructed impedance value and intracranial pressure exhibited a strong negative correlation in all patients (mean correlation: | |
| Brain abscess | In vivo canine model | Relative conductivity contrast ratios (rCCR, %) of central abscess lesions were higher than those of surrounding areas at 6, 12, and 18 h ( |
| Brain neoplasms | Three-dimensional finite element model | Tumor-like anomalies with 200% conductivity contrast were straightforwardly detected and imaged using an existing 3 T system with total acquisition time under 30 min |
Research progress in brain electrical impedance tomography
| Disease | Research group | Method | Research results |
|---|---|---|---|
| Epilepsy | Holder D | EIT with subdural electrodes | Localization of epileptic foci [ |
| Combining EEG telemetry and EIT data | EIT detected and localized different physiological changes during interictal and ictal activity [ Changes in EIT were consistent with electrogram activity during seizures [ | ||
| Non-penetrating surface electrodes | Cortical EIT epilepsy imaging [ | ||
| Deeper neural activity Imaging, penetration depth ≤ 2.5 mm below the cortex [ | |||
Hippocampus imaging, penetration depth ≥ 3 mm below the cortex [ Optimization of cortical EIT epilepsy imaging [ | |||
| Dong X | Nonlinear dynamic methods | Seizure prediction [ | |
| Responsive electrical stimulation system | Epilepsy prediction and seizure suppression [ | ||
| EIT | Real-time imaging of epileptic seizures [ | ||
| Stroke | Holder D | MFEIT | Imaging and differentiation of hemorrhagic and ischemic stroke [ |
| Jacobian matrix | Improved imaging quality [ | ||
| Analysis of MFEIT, EEG, CT, and MRI data | Basis of future research into stroke classification [ | ||
| Dong X | MFEIT | Detection and imaging of cerebral ischemia [ | |
| Impedance spectroscopy of normal brain tissue and hemorrhagic and ischemic stroke injury [ | |||
| Differentiation of normal, ischemic, and hemorrhagic brain tissue types based on impedance spectroscopy [ | |||
| Twist drill drainage for subdural hematoma | Intraoperative real-time monitoring and measurement of intracranial hemorrhage [ | ||
| Brain injuries and brain edema | Dong X | EIT | Real-time and noninvasive monitoring of local brain edema [ |
| Dynamic EIT | Evaluation and trial of performance of several different EIT algorithms in continuous monitoring of brain injury [ | ||
| 1260 Impedance/Gain-Phase Analyzer | Measurement of electrical impedance at different stages in a rat model of brain edema after ischemic brain injury [ | ||
| Real-time monitoring and differentiation of brain edema [ | |||
| 16-electrode EIT system | Changes in brain water content associated with cerebral edema and monitoring of intracranial pressure and brain impedance imaging [ | ||
| Brain abscess | Kim HJ | MREIT | Comparative information on new brain abscess lesions [ |
| Characterization of time course changes before and after brain abscess induction [ | |||
| Brain neoplasms | Farnarier P | Stereoimpedoencephalography (SIEG) | Relationship between brain tumor tissue impedance and normal tissue impedance [ |
| Bullard DE | Monopolar and bipolar impedance monitoring | Combination of changes in brain impedance characteristics with corresponding CT density [ | |
Kim HJ Muftuler LT | MREIT | Feasibility of MREIT conductivity imaging for brain tumor detection [ |
EIT electrical impedance tomography, MFEIT multifrequency electrical impedance tomography, MREIT magnetic resonance electrical impedance tomography, EEG electroencephalography, CT computed tomography, MRI magnetic resonance imaging, PET positron emission tomography
Fig. 5Microelectrode array EIT was simulated using an anatomically accurate marmoset brain model. Adapted from [145]. EIT electrical impedance tomography