| Literature DB >> 31496945 |
Joshua B Ewen1,2,3, John A Sweeney4, William Z Potter5.
Abstract
Biological treatment development for syndromal neuropsychiatric conditions such as autism has seen slow progress for decades. Speeding drug discovery may result from the judicious development and application of biomarker measures of brain function to select patients for clinical trials, to confirm target engagement and to optimize drug dose. For neurodevelopmental disorders, electrophysiology (EEG) offers considerable promise because of its ability to monitor brain activity with high temporal resolution and its more ready application for pediatric populations relative to MRI. Here, we discuss conceptual/definitional issues related to biomarker development, discuss practical implementation issues, and suggest preliminary guidelines for validating EEG approaches as biomarkers with a context of use in neurodevelopmental disorder drug development.Entities:
Keywords: EEG; autism; biomarker; neuropsychiatry; validation
Year: 2019 PMID: 31496945 PMCID: PMC6712089 DOI: 10.3389/fnint.2019.00045
Source DB: PubMed Journal: Front Integr Neurosci ISSN: 1662-5145
Types of Studies Related to Biomarker Development.
| Biomarker Discovery | Two-group comparisons Correlation between physiological (EEG) measure and clinical variable Data-driven cluster identification Identification of EEG measure in which clinical group is in tail of normative distribution | |
| Biomarker Reliability | Test-retest measurement of biomarker read-out | Studies demonstrating poor reliability are adequate to exclude a biomarker candidate from further consideration. |
| Biomarker Validation | Data collection in training sample. Determination of optimal threshold. In test sample, calculation of sensitivity/specificity. | Adequately validated, a biomarker is ready for use |
| FDA Biomarker Qualification | Similar to biomarker validation, but not limited to a single methodology or analysis pipeline | Allows the biomarker to be used in FDA studies without re-validation. |
| Establishing Biomarker as Tool for Measuring an Underlying Physiologic Process in Multiple Contexts | Not a study | Cross-linked knowledge that will allow us to propose, with some confidence, utility of the biomarker in an even greater range of applications |
FIGURE 1Causal models of blood sugar used as a biomarker In diabetes and sed rate as a biomarker in autoimmune disorders. Biomarkers shown in red. Mechanistic knowledge is neither necessary nor sufficient for demonstrating validity of a biomarker candidate within a particular COU. However, because we know that blood sugar has a direct causal role on certain complications of diabetes, this knowledge opens up the reasonable possibility that blood sugar could be successfully validated as a surrogate biomarker as well as a diagnostic, pharmacodynamics/response and monitoring biomarker. By contrast, little It known about the relationship between sed rate, most used as a monitoring biomarker, and the causal path of clinical sequellae in autoimmune disorders. This absence of information does prohibit the sed rate from being validated as a diagnostic, response or monitoring biomarker; it simply means there is less a priori knowledge going into those validation studies.
FDA Biomarker Contexts of Use (COU).
| Diagnostic | Concurrent biomarker that specifies whether or not an individual has a disorder/pathologic process |
| Monitoring | Concurrent biomarker that concurrently reflects a change in a disease or in a side effect |
| Safety | Concurrent biomarker that reflects presence/degree of toxicity from an exposure |
| Response | Prospective biomarker that reflects a response to an intervention; when highly well validated, may serve as a |
| Prognostic | Prospective biomarker that predicts clinical course |
| Predictive | Prospective biomarker that predicts response to an intervention |
| Susceptibility/Risk | Prospective biomarker that reflects potential for developing or disease sensitivity to a negative outcome following an exposure |
FIGURE 2EEG finding can be a good diagnostic biomarker while being a poor monitoring biomarker in epilepsy. In this causal model, lEDs follow from the pathophysiology that causes seizures but are upstream to the effect of seizure medications.
FIGURE 3Confounded measure intended to index visual perception. In this example relevant to a diagnostic biomarker, a specific form of Visual Perception alteration is understood to be a consequence of ASD and is intended to be indexed by the Event-Related Potential (ERP). However, Visual Attention (such as looking at the stimulus display) is both necessary for task performance and is also systematically different between the ASD group and the control group. In this example, Visual Attention has a bigger impact on the ERP dependent variably (heavy arrow) than does the Visual Perception ability, and therefore confounds the interpretation of the ERP read-out as a valid measure of Visual Perception.