Portfolio item number 1
Short description of portfolio item number 1
Short description of portfolio item number 1
Short description of portfolio item number 2 
We introduce Hi5, a large synthetic dataset and data synthesis pipeline for 2D hand pose estimation that requires no human annotation, enabling diverse and accurate model training with only consumer-grade hardware.
Building a remote monitoring framework that tracks digital severity trajectories over time and aligns them with clinical scores, medication states, and self-reported symptom burden.
We developed PARK, a multimodal AI-driven remote screening tool that identifies Parkinson’s disease from webcam-based recordings of speech, facial expression, and motor tasks. PARK was evaluated across three independent datasets spanning supervised and unsupervised settings, demonstrating strong classification performance and high usability in diverse populations.
Developing a model that predicts clinician-rated MDS-UPDRS Part III severity from task-based video recordings, enabling objective, at-home motor assessment.
We developed an AI-based screening framework that detects Parkinson’s disease from brief smile videos captured on a smartphone or webcam, demonstrating high accuracy and broad applicability, including in diverse population samples.
We developed a novel fusion architecture that combines semi-supervised speech embeddings to detect Parkinson’s Disease (PD) using natural speech recordings collected from over 1,300 participants in both home and clinical environments.
We developed UFNet, an uncertainty-calibrated multimodal fusion network that detects Parkinson’s disease from at-home webcam tasks (finger tapping, smiling, and speech), using only a computer with a camera, microphone, and internet connection. The work introduces the first large-scale, multi-task PD video dataset and shows that fusing task-specific models with uncertainty-aware attention improves both performance and safety for remote screening.
We developed and evaluated a user-centered teleneurology platform designed to empower individuals with Parkinson’s Disease (PD) by offering remote access to screening tasks, educational resources, and responsive interfaces.
Designing a preference-aligned LLM assistant that contextualizes digital severity trends, medication states, and lifestyle factors to support continuous, individualized PD care.
We introduce TallnWide, a novel algorithm for performing Principal Component Analysis (PCA) on extremely large, high-dimensional datasets that are distributed across geographic locations, addressing both scalability and communication overhead in big data analytics.
We propose User Attributed Core Decomposition (UACD), a novel graph analytic method that identifies the most influential spreaders in large social networks by combining network topology with rich user-specific information (followers, friends, tweet counts, verified status) in a distributed setting. UACD significantly improves accuracy and scalability over existing local and global centrality measures by incorporating both structural and user attributes.
Published in Information Systems, 2021
We propose TallnWide, a fast, scalable geo-distributed principal component analysis (PCA) algorithm that efficiently computes PCA on extremely high-dimensional data without intermediate memory overflow by dividing blocks of data and minimizing communication overhead. The method handles $\mathbf{10\times}$ higher dimensionality with $\mathbf{2.9\times}$ less time compared to baselines, enabling practical deployment in distributed big data settings.
Recommended citation: Adnan TMT, Tanjim MM, Adnan MA. Fast, Scalable and Geo-Distributed PCA for Big Data Analytics. Information Systems. 2021;98:101710.
Download Paper
Published in Social Network Analysis and Mining, 2022
We propose UACD, a novel method for identifying the most influential spreaders in large social networks by combining user-specific attributes with topological structure. Unlike traditional global centrality methods, UACD uses only local node information and offers scalability to large graphs while maintaining superior ranking performance. A distributed implementation on Amazon EC2 shows that UACD is on average $\mathbf{12.5\%}$ more accurate and $\mathbf{175\times}$ faster than state-of-the-art alternatives for influence ranking on large Twitter datasets.
Recommended citation: Adnan, T.T., Islam, M.S., Papon, T.I., Nath, S. and Adnan, M.A., 2022. Uacd: a local approach for identifying the most influential spreaders in twitter in a distributed environment. Social Network Analysis and Mining, 12(1), p.37.
Download Paper
Published in IMWUT, 2024
This study evaluated user reactions to AI-driven PD screening results and communication strategies in unsupervised home settings. The findings highlight design considerations that enhance user autonomy and trust, informing future deployments of remote PD screening tools.
Recommended citation: Rahman, W., Abdelkader, A., Lee, S., Yang, P., Islam, M.S., Adnan, T., Hasan, M., Wagner, E., Park, S., Dorsey, E.R. and Schwartz, C., 2024. A user-centered framework to empower people with parkinson's disease. Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies, 7(4), pp.1-29.
Download Paper
Published in ACII, 2025
We introduce Hi5, a synthetic hand pose estimation dataset of $\mathbf{583,000}$ images generated without human annotation, leveraging high-fidelity 3D hand models with diverse genders and skin tones, dynamic environments, and consumer-grade rendering. The data synthesis pipeline precisely controls pose diversity and representation, enabling robust model training. Models trained on Hi5 outperform real-data baselines on occluded and perturbed real benchmarks, demonstrating synthetic data’s potential for scalable hand pose estimation.
Recommended citation: Hasan, M., Ozel, C., Long, N., Martin, A., Potter, S., Adnan, T., Lee, S., Zadeh, A. and Hoque, E., 2024. Hi5: 2D Hand Pose Estimation with Zero Human Annotation. arXiv preprint arXiv:2406.03599.
Download Paper
Published in AAAI, 2025
We introduce a large-scale multi-task video dataset ($\mathbf{3,306}$ videos from $\mathbf{845}$ participants) and a novel fusion model, UFNet, for multimodal PD screening using webcam video. UFNet significantly outperformed single-task models in diagnostic accuracy (AUROC $\mathbf{\sim93\%}$), demonstrating scalable at-home detection.
Recommended citation: Islam, M.S., Adnan, T., Freyberg, J., Lee, S., Abdelkader, A., Pawlik, M., Schwartz, C., Jaffe, K., Schneider, R.B., Dorsey, R. and Hoque, E., 2025, April. Accessible, at-home detection of Parkinson’s disease via multi-task video analysis. In Proceedings of the AAAI Conference on Artificial Intelligence (Vol. 39, No. 27, pp. 28125-28133).
Download Paper
Published in npj Parkinson’s Disease, 2025
This work introduces a speech-based Parkinson’s disease screening framework using English pangram utterances from $\mathbf{1,306}$ participants. By fusing semi-supervised Wav2Vec2 and ImageBind speech embeddings into a multimodal classifier, the model achieved $\mathbf{\sim89\%}$ AUROC and $\mathbf{\sim86\%}$ accuracy, with strong external robustness.
Recommended citation: Adnan, T., Abdelkader, A., Liu, Z., Hossain, E., Park, S., Islam, M.S. and Hoque, E., 2025. A novel fusion architecture for detecting Parkinson’s Disease using semi-supervised speech embeddings. npj Parkinson's Disease, 11(1), p.176.
Download Paper
Published in NEJM AI, 2025
We developed a facial micro-expression analysis framework to distinguish Parkinson’s disease (PD) using short smile videos, achieving strong classification accuracy and generalizability across international cohorts. The model attained $\mathbf{\sim88\%}$ accuracy using only consumer-grade cameras, demonstrating the potential for remote and accessible PD screening.
Recommended citation: Adnan, T., Islam, M.S., Lee, S., Wasifur Rahman Chowdhury, E.M., Tithi, S.D., Noshin, K., Islam, M.R., Sarker, I., Rahman, M.S., Schneider, R.B. and Adams, J.L., 2025. AI-Enabled Parkinson’s Disease Screening Using Smile Videos. NEJM AI, 2(7), p.AIoa2400950.
Download Paper
Published in Preprint (PMC / AI Screening), 2025
PARK is a web-based artificial intelligence (AI) tool for remote screening of Parkinson’s disease (PD) using video and audio recordings collected via webcam, including speech, facial expressions, and motor tasks. The system was evaluated on $\mathbf{1,865}$ participants across diverse demographic groups and settings, including supervised clinical environments and unsupervised home use. PARK achieved consistent performance with accuracy ranging from $\mathbf{80.2\%–80.6\%}$ and AUROC between $\mathbf{0.85–0.87}$ on multiple independent test sets, and demonstrated high agreement with movement disorder specialists on held-out assessments. The model generalized well across age, sex, and ethnic subgroups, included uncertainty-aware predictions to support safe use in unsupervised environments, and showed favorable usability and participant satisfaction, highlighting its potential as an accessible, scalable tool for remote PD screening.
Recommended citation: Islam, M.S., Adnan, T., Abdelkader, A., Liu, Z., Ma, E., Park, S., Azad, A., Liu, P., Pawlik, M., Hartman, E. and Shelton, E., 2025. Remote AI Screening for Parkinson’s Disease: A Multimodal, Cross-Setting Validation Study. Research Square, pp.rs-3.
Download Paper
Published:
This is a description of your talk, which is a markdown file that can be all markdown-ified like any other post. Yay markdown!
Published:
This is a description of your conference proceedings talk, note the different field in type. You can put anything in this field.
Undergraduate course, University 1, Department, 2014
This is a description of a teaching experience. You can use markdown like any other post.
Workshop, University 1, Department, 2015
This is a description of a teaching experience. You can use markdown like any other post.