Your query is quite typical for practitioners. Pardon my over simplification.
The interpretation of Eigenvectors is not easily understood by the practitioner (by this I mean scientist or engineer). The eigenvectors are likely some combination (and subset) of the biomarkers in your study. Since eigenvectors are looking at the data through a different "dimension", that dimension may be non-sensical our have no intrinsic meaning from a practical standpoint. Eigenvectors don't have a familiar "name". Hopefully, what PCA will do is to identify the need and provide motivation for further investigation.
How did you get your data? Are the variations in any of the biomarkers biased (e.g., do some vary more than others)? If you already know some of the biomarkers are collinear (or correlated or redundant), can you use this knowledge to reduce the number of biomarkers before doing PCA?
Now, some folks don't really care to understand (what are these eigenvectors and how do they relate to the variables in my raw data?) and just want a model that "works" (perhaps like neural networks).
"All models are wrong, some are useful" G.E.P. Box