| Literature DB >> 32576216 |
Nicolas Canac1, Kian Jalaleddini2, Samuel G Thorpe2, Corey M Thibeault2, Robert B Hamilton2.
Abstract
Measurement of intracranial pressure (ICP) is crucial in the management of many neurological conditions. However, due to the invasiveness, high cost, and required expertise of available ICP monitoring techniques, many patients who could benefit from ICP monitoring do not receive it. As a result, there has been a substantial effort to explore and develop novel noninvasive ICP monitoring techniques to improve the overall clinical care of patients who may be suffering from ICP disorders. This review attempts to summarize the general pathophysiology of ICP, discuss the importance and current state of ICP monitoring, and describe the many methods that have been proposed for noninvasive ICP monitoring. These noninvasive methods can be broken down into four major categories: fluid dynamic, otic, ophthalmic, and electrophysiologic. Each category is discussed in detail along with its associated techniques and their advantages, disadvantages, and reported accuracy. A particular emphasis in this review will be dedicated to methods based on the use of transcranial Doppler ultrasound. At present, it appears that the available noninvasive methods are either not sufficiently accurate, reliable, or robust enough for widespread clinical adoption or require additional independent validation. However, several methods appear promising and through additional study and clinical validation, could eventually make their way into clinical practice.Entities:
Mesh:
Year: 2020 PMID: 32576216 PMCID: PMC7310456 DOI: 10.1186/s12987-020-00201-8
Source DB: PubMed Journal: Fluids Barriers CNS ISSN: 2045-8118
Fig. 1An ICP pulse waveform, with three characteristic peaks: P1, P2, and P3
Fig. 2The relationship between pressure and volume within the intracranial compartment. In region A, changes in the volume of one intracranial component can be buffered by changes in the volume of other components, resulting in minimal change in ICP. In region B, this buffering capacity is becoming exhausted, and ICP, though still within a normal range, begins to rise. Finally, in region C, the buffering capacity has been completely exhausted, and ICP rises rapidly at an accelerating rate in response to an increase in one or more intracranial components
General characteristics of noninvasive ICP monitoring techniques
| Method | Population | Continuous | Use | Rank |
|---|---|---|---|---|
| TCD | Varied | Yes | Estimation | 3 |
| TDTD | Varied | No | Estimation | 3 |
| Dynamic MRI | Hydrocephalus | No | Classification | 2 |
| NIRS | TBI | Yes | Classification | 1 |
| TMD | Hydrocephalus/Meniere’s disease | No | Classification | 1 |
| OAE | Healthy | Yes | Classification | 2 |
| SVP | Unspecified | No | Classification (only) | 1 |
| ONSD | Varied | No | Classification | 3 |
| Ophthalmoscopy | TBI | No | Classification (only) | 1 |
| OCT | N/A | No | N/A | 1 |
| VEP | Varied | Possible | Estimation | 2 |
| EEG | Varied | Possible | Estimation | 1 |
The Method column refers to the technique name or abbreviation. The Population column refers to the patient population that has been studied using that method. The Continuous column specifies whether the method can be used for continuous monitoring. The Use column refers to whether the method has been primarily indicated for use in estimation of ICP value or classification into ICP labels. Finally, the Rank column offers a subjective ranking of the authors’ assessment of the current state of research regarding the efficacy of the method for monitoring ICP: 1 (inaccurate/not useful/lack of evidence), 2 (potentially useful/needs more research), and 3 (likely useful as a supplement to invasive measurement in some situations). Abbreviations used: TCD (Transcranial Doppler), TDTD (two-depth transorbital doppler), NIRS (near-infrared spectroscopy), TMD (tympanic membrane displacement), OAE (otoacoustic emissions), SVP (spontaneous venous pulsations), ONSD (optic nerve sheath diameter), OCT (optical coherence tomography), VEP (visual evoked potentials), EEG (electroencephalography)
Definitions for categorical rankings of noninvasive ICP monitoring methods
| Rank | Definition |
|---|---|
| 1 | Method is not useful, either due to being inaccurate or simply lacking enough evidence to make an assessment |
| 2 | Method may be useful as a supplement to invasive monitoring, but results are likely very limited and mixed, and more research and/or development is needed |
| 3 | Though not necessarily universally positive, evidence is generally more consistent and substantial than for rank 2 and method is likely to be useful as a supplement to invasive measurement in at least some clinical situations in the absence of technical hurdles to adoption |
Descriptions of usability scores for classification and estimation of ICP, as well as approximate quantitative examples corresponding to each score
| Score | Description | Examples |
|---|---|---|
| 1 | None | |
| 2 | Weak | |
| 3 | Moderate | |
| 4 | Strong |
Fig. 3CBFV pulse waveform. Systolic, diastolic, and mean flow velocity are used to calculate PI
Studies exploring PI-based TCD method
| References | Population | Classification use score | Estimation use score |
|---|---|---|---|
| Gao [ | TBI, 43; hemorrhagic stroke, 7 | 2 | 1 |
| Prunet [ | TBI/stroke/SAH, 20 Control, 20 | 4 | – |
| Robba [ | TBI/polytrauma/SAH, 22 | 1 | – |
| Robba [ | TBI/SAH/intracranial hemorrhage, 64 | 1 | – |
| Voulgaris [ | TBI, 37 | 3 | – |
| Wakerley [ | Varied, 78 | 3 | – |
| Wang [ | TBI, 75; hypertensive brain injury, 15; intracranial lesions, 3 | 4 | – |
| Zweifel [ | TBI, 290 | 2 | 1 |
| Bellner [ | TBI/SAH/other, 81 | 4 | 3 |
| Moreno [ | TBI, 125 | 4 | – |
| Brandi [ | TBI, 45 | – | 2 |
| Behrens [ | INPH, 10 | – | 1 |
| Rainov [ | Hydrocephalus, 29 | 2 | 1 |
| Rajajee [ | ALF, 21 | 1 | – |
| Park [ | TBI, 11 | 2 | 3 |
Refer to Table 3 for interpretation of scores. If a method was not evaluated in the context of either classification or evaluation, then no score is provided for that use case
Studies exploring CPP-based TCD methods
| Method | References | Population | Classification use score | Estimation use score |
|---|---|---|---|---|
| Aaslid formula (Eq. | Aaslid 1986 [ | Hydrocephalus, 10 | 3 | 2 |
| Czosnyka [ | TBI, 96 | – | 2 | |
| Czosnyka formula (Eq. | Czosnyka [ | TBI, 96 | – | 2 |
| Schmidt [ | TBI, 25 | – | 2 | |
| Brandi [ | TBI, 45 | – | 2 | |
| Cardim [ | TBI, 40 | 2 | 2 | |
| Cardim [ | Hydrocephalus, 53 | – | 1 | |
| Edouard formula (Eq. | Edouard [ | TBI, 20 | – | 1 |
| Brandi [ | TBI, 45 | – | 1 | |
| Varsos formula [ | Varsos [ | TBI, 280 | 4 | 2 |
| Cardim [ | TBI, 40 | 3 | 2 | |
| Cardim [ | Hydrocephalus, 53 | – | 1 |
Refer to Table 3 for interpretation of scores. If a method was not evaluated in the context of either classification or evaluation, then no score is provided for that use case
Studies exploring model-based TCD methods
| Method | References | Population | Classification use score | Estimation use score |
|---|---|---|---|---|
| Data-based models | ||||
| Schmidt system ID model [ | Schmidt [ | TBI, 11 | – | 2 |
| Schmidt [ | TBI, 17 | – | 2 | |
| Schmidt [ | Hydrocephalus, 21 | – | 3 | |
| Budohoski [ | TBI, 292 | – | 2 | |
| Cardim [ | TBI, 40 | 2 | 2 | |
| Cardim [ | Hydrocephalus, 53 | – | 1 | |
| Schmidt [ | TBI, 137 | – | 3 | |
| Schmidt [ | Varied cerebral diseases, 41 | – | 2 | |
| SCA Schmidt model [ | Schmidt [ | TBI, 135; hemorrhagic stroke, 10 | – | 2 |
| Schmidt fuzzy pattern model [ | Schmidt [ | TBI, 103 | 3 | 2 |
| Calibrated Schmidt model [ | Schmidt [ | Brain lesions, 13 | – | 2 |
| Schmidt [ | Varied cerebral diseases, 41 | – | 2 | |
| Nonlinear Schmidt model [ | Xu [ | TBI, 14; hydrocephalus, 9 | – | 2 |
| Data mining [ | Hu [ | TBI, 9 | – | 2 |
| Kim [ | TBI, 57 | – | 2 | |
| Ensemble sparse classifiers [ | Kim [ | TBI, 80 | 2 | – |
| Semisupervised learning model [ | Kim [ | TBI/SAH/NPH, 90 | 4 | – |
| Linear discriminant analysis [ | Aggarwal [ | ALF, 16 | 2 | – |
| SVM [ | Chacon [ | TBI, 8 | – | 4 |
| Random forest [ | Wadehn [ | TBI, 36 | 3 | – |
| Theory-based models | ||||
| Kashif model [ | Kashif [ | TBI, 37 | 3 | 3 |
| Park [ | TBI, 11 | 2 | 3 | |
| Pressure corrected Kashif model [ | Noraky [ | SAH, 5 | – | 3 |
| DC Kashif model [ | Park [ | TBI, 11 | 3 | 3 |
| Hybrid models | ||||
| Hybrid model | Wang [ | SAH/TBI, 2 | – | 4 |
Refer to Table 3 for interpretation of scores. If a method was not evaluated in the context of either classification or evaluation, then no score is provided for that use case