MedAI
Stanford MedAI Stanford MedAI
5.66K subscribers
167 views
0

 Published On Mar 4, 2024

Title: Multimodal Brain Age Estimation Using Interpretable Adaptive Population-Graph Learning

Speaker: Margarita Bintsi

Abstract:
Brain age estimation is clinically important as it can provide valuable information in the context of neurodegenerative diseases such as Alzheimer’s. Population graphs, which include multimodal imaging information of the subjects along with the relationships among the population, have been used in literature along with Graph Convolutional Networks (GCNs) and have proved beneficial for a variety of medical imaging tasks. A population graph is usually static and constructed manually using non-imaging information. However, graph construction is not a trivial task and might significantly affect the performance of the GCN, which is inherently very sensitive to the graph structure. In this work, we propose a framework that learns a population graph structure optimized for the downstream task. An attention mechanism assigns weights to a set of imaging and non-imaging features (phenotypes), which are then used for edge extraction. The resulting graph is used to train the GCN. The entire pipeline can be trained end-to-end. Additionally, by visualizing the attention weights that were the most important for the graph construction, we increase the interpretability of the graph. We use the UK Biobank, which provides a large variety of neuroimaging and non-imaging phenotypes, to evaluate our method on brain age regression and classification. The proposed method outperforms competing static graph approaches and other state-of-the-art adaptive methods. We further show that the assigned attention scores indicate that there are both imaging and non-imaging phenotypes that are informative for brain age estimation and are in agreement with the relevant literature.

Speaker Bio:
Margarita is a final year PhD student at the BioMedIA lab at Imperial College London, supervised by Prof. Daniel Rueckert. Her PhD is on deep learning for medical imaging, and more specifically brain age estimation. Her interests include graph machine learning and multimodal learning, with a particular focus on increasing interpretability. During her PhD, she interned at Microsoft Research and the NASA Frontier Development Lab, when she applied machine learning methods to telecommunications and solar physics, respectively.

------

The MedAI Group Exchange Sessions are a platform where we can critically examine key topics in AI and medicine, generate fresh ideas and discussion around their intersection and most importantly, learn from each other.

We will be having weekly sessions where invited speakers will give a talk presenting their work followed by an interactive discussion and Q&A.

Our sessions are held every Monday from 1pm-2pm PST.

To get notifications about upcoming sessions, please join our mailing list: https://mailman.stanford.edu/mailman/...

For more details about MedAI, check out our website: https://medai.stanford.edu. You can follow us on Twitter @MedaiStanford

Organized by members of the Rubin Lab (http://rubinlab.stanford.edu) and Machine Intelligence in Medicine and Imaging (MI-2) Lab:
- Nandita Bhaskhar (https://www.stanford.edu/~nanbhas)
- Amara Tariq (  / amara-tariq-475815158  )

show more

Share/Embed