Manually analyzing neural histopathology is a tedious process, and while there are reference sources available such as the Allen Brain Atlas, one of the primary challenges of using image analysis software to compare neural pathology between animals is the alignment of the rostral-caudal axis. The current study aims to investigate the use of Visiopharm, an image analysis software, and supervised machine learning to automate the assignment of brain sections along the rostral-caudal axis.This research is a part of a larger study conducted to analyze potential neuropathological changes in male mice that have undergone blast-induced mild traumatic brain injuries. Glial fibrillary acidic protein (GFAP), Tyrosine hydroxylase (TH), Tryptophan hydroxylase (TPH), Kappa Opioid Receptor (KOR) and Ionized Calcium-Binding Adapter (IBA) were used to identify histopathology. First, we manually labeled sections in Visiopharm and trained a deep learning algorithm to outline the sections and compute section parameters (e.g., circumference, diameter, convexity). In parallel, we manually assigned each labeled section according to the Allen Brain Atlas (ABA) rostral-caudal axis. Finally, we used python to train a supervised machine learning regressor to predict the assigned ABA slide number based on the section parameters generated by Visiopharm. We have successfully completed workflow for TH labeled sections and are currently working to generalize the algorithms to the other stains. We expect that with additional labeling and training, we will be able to successfully develop an automated process for classifying sections on the rostral-caudal axis.The goal is that after training the app further through the labeling of sections, the app will be able to create parameters for future stains, thus creating a general classification framework.This framework will increase consistency across future labeling, which allows for more reliable and faster classification. This additional time can be devoted to analyzing specific stains and other research questions.