Abstract
AbstractOne of the important yet labor intensive tasks in neuroanatomy is the identification of select populations of cells. Current high-throughput techniques enable marking cells with histochemical fluorescent molecules as well as through the genetic expression of fluorescent proteins. Modern scanning microscopes allow high resolution multi-channel imaging of the mechanically or optically sectioned brain with thousands of marked cells per square millimeter. Manual identification of all marked cells is prohibitively time consuming. At the same time, simple segmentation algorithms suffer from high error rates and sensitivity to variation in fluorescent intensity and spatial distribution. We present a methodology that combines human judgement and machine learning that serves to significantly reduce the labor of the anatomist while improving the consistency of the annotation. As a demonstration, we analyzed murine brains with marked premotor neurons in the brainstem. We compared the error rate of our method to the disagreement rate among human anatomists. This comparison shows that our method can reduce the time to annotate by as much as ten-fold without significantly increasing the rate of errors. We show that our method achieves significant reduction in labor while achieving an accuracy that is similar to the level of agreement between different anatomists.
Publisher
Cold Spring Harbor Laboratory
Reference37 articles.
1. Boosting the margin: a new explanation for the effectiveness of voting methods;The Annals of Statistics,1998
2. An empirical comparison of voting classification algorithms: bagging, boosting, and variants;Machine Learning,1999
3. Bekoe, A.N.A. , Allotey, E.A. , Akorsu, E.E. , Abaka-Yawson, A. , Adusei, S. , Kpene, G.E. , Kwadzokpui, P.K .: Inter-rater variability in malaria microscopy at the lekma hospital, ghana. Journal of Parasitology Research 2020 (2020)
4. Nucleus segmentation across imaging experiments: the 2018 data science bowl;Nature Methods,2019
5. Chen, T. , Guestrin, C .: Xgboost: a scalable tree boosting system. In: Proceedings of the 22nd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining. pp. 785–794 (2016)