assayagnostic
Assayagnostic is an adjective describing methods, technologies, or analytic approaches that are not tied to any specific assay design or platform. The term blends assay with the suffix –agnostic, which has been used in fields such as machine learning (model-agnostic) to indicate independence from particular underlying models. In the biomedical sciences, assayagnostic approaches emphasize flexibility, allowing data to be interpreted or compared across different assay formats such as ELISA, mass spectrometry, or high‑throughput sequencing.
The concept arose in the early 2010s as researchers sought to integrate heterogeneous datasets from multiple
Benefits of an assayagnostic framework include reduced bias introduced by platform selection, broader applicability of findings,
Currently, assayagnostic principles are implemented in bioinformatics tools such as the clinical data integration toolkit and