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1. To compare and evaluate standard graphlet based methods, GNNs and geometric deep learning under the same network biology tasks.
2. To produce a model that combines graphlet statistics, message passing GNNs, and 3D protein-oriented structure embeddings taking advantage of their complementary strengths.
3. To present uncertainty quantification as an end product in all predictive models to quantify model confidence, for example in the aleatoric and epistemic contexts.
4. To combine biological ontologies (e.g. GO, Disease Ontology) and obtained knowledge from known hierarchical bases into model architectures with the aim of improving relevance and interpretation of biological meaning.
Benchmarking tasks: protein function prediction, PPI prediction, drug–target interactions prediction, and graph classification using publicly available data sets.
Hybrid architecture: a modular framework that integrates graphlet-based topological features, standard and higher-order GNNs, geometric deep learning layers to provide 3D structure embeddings, and has transformer-based graph components to accommodate the encoding of longer-distance dependencies.
Estimate uncertainty: Use Bayesian GNNs and Monte Carlo dropout to explore, and distinguish, between aleatoric and epistemic uncertainty.
Modeling with ontological guidance: using ontology-based inductive biases within the model through visible neural networks or structured attention.
Evaluative framework: like any model, we will use cross-validation for model selection and once we select a robust model we will benchmark against standard datasets (e.g., CAFA, DREAM, PDB) to evaluate on accuracy, scalable architecture, and interpretability.
1. Chen et al. (2020) – On limitations of message-passing GNNs and expressive power:
Chen, H., et al. “Can GNNs count substructures?”
2. Nelson et al. (2019) – Comparative study of embeddings vs graph-based methods:
Nelson, W., et al. “To embed or not to embed: Assessing the effectiveness of graph embeddings.”
3. Gligorijević et al. (2021) – GNNs for 3D protein structure modeling:
Gligorijević, V., et al. “Structure-based function prediction using GNNs.”
4. Tahmasebi et al. (2020, 2023) – Higher-order GNNs for subgraph enumeration:
Tahmasebi, A., et al. “Subgraph-aware GNNs for network comparison.”
5. Ma et al. (2018), Gaudelet et al. (2020) – Visible neural networks and biological ontologies:
Ma, J., et al. “Using biological ontologies in neural network architectures.”
1. Compare and evaluate network alignment methods within the field of biology, and within the field of social sciences on common datasets.
2. Recognize data-related biases (i.e. network type) and adapt models to operate robustly across domains.
3. Construct an unifying benchmarking framework for equitable comparison across domains.
4. Propose composite alignment algorithms for fully utilizing strengths from each domain.
1. Zitnik, M., Li, M.M., Wells, A., Glass, K., Morselli Gysi, D., Krishnan, A., Murali, T.M., Radivojac, P., Roy, S., Baudot, A., Bozdag, S., Chen, D.Z., Cowen, L., Devkota, K., Gitter, A., Gosline, S.J.C., Gu, P., Guzzi, P.H., Huang, H., Jiang, M., Kesimoglu, Z.N., Koyuturk, M., Ma, J., Pico, A.R., Przulj, N., Przytycka, T.M., Raphael, B.J., Ritz, A., Sharan, R., Shen, Y., Singh, M., Slonim, D.K., Tong, H., Yang, X.H., Yoon, B.-J., Yu, H. and Milenković, T., Current and future directions in network biology, Bioinformatics Advances, 2024, 00, vbae099. Available at: https://doi.org/10.1093/bioadv/vbae099 (Accessed: 14 May 2025).
2. Eyuboglu et al. (2023) – Challenges of comparing biological vs social networks.
3. Meng et al. (2016) – Global vs local network alignment methods.
4. Guzzi & Milenković (2017) – Survey and comparison of biological network alignment approaches.
5. Vijayan et al. (2017, 2020) – Static/dynamic, pairwise/multiple network alignment.
6. Section 3 of your content – Overview of network-of-networks and alignment challenges.
1. Build a framework for quantifying aleatoric/population and epistemic/model uncertainty from graph-based models.
2. Apply and evaluate uncertainty-aware models in protein function prediction, PPI prediction, and drug–target interactions.
3. Identify sources of uncertainty between network structure, data quality, and model design.
4. Offer interpretability methods for evaluating confidence in model predictions.
1. Zitnik, M., Li, M.M., Wells, A., Glass, K., Morselli Gysi, D., Krishnan, A., Murali, T.M., Radivojac, P., Roy, S., Baudot, A., Bozdag, S., Chen, D.Z., Cowen, L., Devkota, K., Gitter, A., Gosline, S.J.C., Gu, P., Guzzi, P.H., Huang, H., Jiang, M., Kesimoglu, Z.N., Koyuturk, M., Ma, J., Pico, A.R., Przulj, N., Przytycka, T.M., Raphael, B.J., Ritz, A., Sharan, R., Shen, Y., Singh, M., Slonim, D.K., Tong, H., Yang, X.H., Yoon, B.-J., Yu, H. and Milenković, T., Current and future directions in network biology, Bioinformatics Advances, 2024, 00, vbae099. Available at: https://doi.org/10.1093/bioadv/vbae099 (Accessed: 14 May 2025).Zhao et al. (2020b) – Overview of uncertainty types in ML.
2. Hüllermeier & Waegeman (2021) – Principles of uncertainty quantification in structured data.
3. Cao et al. (2013), Ding et al. (2006) – Use of distances with theoretical guarantees.
4. Beyer et al. (1999), Radovanović et al. (2010) – Theoretical challenges in high-dimensional distance metrics.
PhDAssistance. (n.d.). Network Biology Dissertation Topics. Retrieved July 19th, 2025, from https://www.phdassistance.com/topic/network-biology-dissertation-topics/
Jalolova, M., and Musawwir, M. “Network Biology Dissertation Topics for PhD Scholars.” PhDAssistance, https://www.phdassistance.com/topic/network-biology-dissertation-topics/ . Accessed 19th July 2025.
Jalolova, M., and Musawwir, M., n.d. Network Biology Dissertation Topics for PhD scholars. [online] Available at: https://www.phdassistance.com/topic/network-biology-dissertation-topics/ [Accessed 19th July 2025].
Jalolova M., Musawwir M. Network Biology Dissertation Topics for PhD scholars [Internet]. PhDAssistance; [cited 2025 Jul 19]. Available from: https://www.phdassistance.com/topic/network-biology-dissertation-topics/
Jalolova, M., and Musawwir, M. (n.d.). Network Biology Dissertation Topics for PhD scholars. Retrieved 19th July 2025, from https://www.phdassistance.com/topic/network-biology-dissertation-topics/
Jalolova, M., and Musawwir, M., Network Biology Dissertation Topics for PhD scholars (PhDAssistance, n.d.) https://www.phdassistance.com/topic/network-biology-dissertation-topics/ accessed 19th July 2025.
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