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
Published in IEEE Journal of Biomedical and Health Informatics, 2014
We develop a novel zero-heat-flux-based temperature monitoring sensor with novelty on sensor form factor with matrix design. The sensor is tested in neonatal monitoring in a hospital and compared with alternative modalities for core temperature monitoring.
Recommended citation: Atallah, L., Bongers, E., Lamichhane, B., & Bambang-Oetomo, S. (2014). Unobtrusive monitoring of neonatal brain temperature using a zero-heat-flux sensor matrix. IEEE Journal of Biomedical and Health Informatics, 20(1), 100-107.
Download Paper
Published in Pervasive Computing Paradigms for Mental Health: 5th International Conference, MindCare, 2016
We conduct a laboratory-based stress test and evaluate different machine learning models for stress detection.
Recommended citation: Smets, E., Casale, P., Großekathöfer, U., Lamichhane, B., De Raedt, W., Bogaerts, K., ... & Van Hoof, C. (2016). Comparison of machine learning techniques for psychophysiological stress detection. In Pervasive Computing Paradigms for Mental Health: 5th International Conference, MindCare 2015, Milan, Italy, September 24-25, 2015, Revised Selected Papers 5 (pp. 13-22). Springer International Publishing.
Download Paper
Published in BioMed Research International, 2017
The application of Eigendecomposition is demonstrated for modeling daily behaviors.
Recommended citation: Schiavone, G., Lamichhane, B., & Van Hoof, C. (2017). The Double Layer Methodology and the Validation of Eigenbehavior Techniques Applied to Lifestyle Modeling. BioMed Research International, 2017(1), 4593956.
Download Paper
Published in eHealth 360°: International Summit on eHealth, 2017
One of the first studies to investigate stress detection in free-living with physiological sensors. We report the large effect of inter-individual differences in stress physiology and propose normalization factor leading to improved stress predictin accuracy.
Recommended citation: Lamichhane, B., Großekathöfer, U., Schiavone, G., & Casale, P. (2017). Towards stress detection in real-life scenarios using wearable sensors: normalization factor to reduce variability in stress physiology. In eHealth 360°: International Summit on eHealth, Budapest, Hungary, June 14-16, 2016, Revised Selected Papers (pp. 259-270). Springer International Publishing.
Download Paper
Published in Journal of Ambient Intelligence and Humanized Computing, 2019
We develop a deep learning-based model for skeleton joint detection, one of the first such model for patient monitoring scenario with low patient-background contrast.
Recommended citation: Zavala-Mondragon, L. A., Lamichhane, B., Zhang, L., & Haan, G. D. (2020). CNN-SkelPose: a CNN-based skeleton estimation algorithm for clinical applications. Journal of Ambient Intelligence and Humanized Computing, 11(6), 2369-2380.
Download Paper
Published in BMC Medical Informatics and Decision Making, 2021
We investigate automatic detection of postictal generalized EEG suppression signature using a machine learning model, demonstrating the feasibility of such approaches.
Recommended citation: Lamichhane, B., Kim, Y., Segarra, S., Zhang, G., Lhatoo, S., Hampson, J., & Jiang, X. (2020). Automated detection of activity onset after postictal generalized EEG suppression. BMC Medical Informatics and Decision Making, 20, 1-10.
Download Paper
Published in MobiHealth, 2021
We provide a first demonstration of patient-independent psychotic relapse prediction performance using mobile sensing data with behavioral templates.
Recommended citation: Lamichhane, B., Ben-Zeev, D., Campbell, A., Choudhury, T., Hauser, M., Kane, J., ... & Sano, A. (2021). Patient-independent schizophrenia relapse prediction using mobile sensor based daily behavioral rhythm changes. In Wireless Mobile Communication and Healthcare: 9th EAI International Conference, MobiHealth 2020, Virtual Event, November 19, 2020, Proceedings 9 (pp. 18-33). Springer International Publishing.
Download Paper
Published in JMIR mHealth and uHealth, 2022
We develop a novel behavioral representation of mobile sensing data using cluster analysis for psychotic relapse prediction.
Recommended citation: Zhou, J., Lamichhane, B., Ben-Zeev, D., Campbell, A., & Sano, A. (2022). Predicting psychotic relapse in schizophrenia with mobile sensor data: routine cluster analysis. JMIR mHealth and uHealth, 10(4), e31006.
Download Paper
Published in IEEE Pervasive Computing, 2022
The technical paper on ECoNet where we describe the development of Everyday conversational network estimator.
Recommended citation: Lamichhane, B., Moukaddam, N., Patel, A. B., & Sabharwal, A. (2022). ECoNet: Estimating Everyday Conversational Network From Free-Living Audio for Mental Health Applications. IEEE Pervasive Computing, 21(2), 32-40.
Download Paper
Published in Arxiv, 2022
We review technological solutions to healthcare challenges for low-resource settings, identifying cluster of papers in four broad areas: hardware, ICT, mobile health, and emerging technologies.
Recommended citation: Lamichhane, B., & Neupane, N. (2022). Improved Healthcare Access in Low-resource Regions: A Review of Technological Solutions. arXiv preprint arXiv:2205.10913.
Download Paper
Published in Interspeech, 2022
We report the findings of our discover of depression severity markers in free-living dyadic interaction parameters.
Recommended citation: Lamichhane, Bishal, Nidal Moukaddam, Ankit B. Patel, and Ashutosh Sabharwal. "Dyadic interaction assessment from free-living audio for depression severity assessment." arXiv preprint arXiv:2209.03901 (2022).
Download Paper
Published in International Conference on Biomedical and Health Informatics (BHI), 2022
We provide a hardware/run-time efficient cough detection algorithm using IMU sensor (inertial measurement unit sensor).
Recommended citation: Lamichhane, B., Nemati, E., Ahmed, T., Rahman, M., Kuang, J., & Gao, A. (2022, September). A Template Matching Based Cough Detection Algorithm Using IMU Data From Earbuds. In 2022 IEEE-EMBS International Conference on Biomedical and Health Informatics (BHI) (pp. 01-04). IEEE.
Download Paper
Published in Arxiv, 2023
We provide one of the first demonstrations of zero-shot prediction capability of ChatGPT across a broad NLP-based mental health application tasks.
Recommended citation: Lamichhane, B. (2023). Evaluation of chatgpt for nlp-based mental health applications. arXiv preprint arXiv:2303.15727.
Download Paper
Published in IEEE Journal of Biomedical and Health Informatics, 2023
We developed RelapsePredNet, a deep learning model to automatically predict psychotic relapses using smartphone data.
Recommended citation: Lamichhane, Bishal, Joanne Zhou, and Akane Sano. "Psychotic relapse prediction in schizophrenia patients using a personalized mobile sensing-based supervised deep learning model." IEEE Journal of Biomedical and Health Informatics 27, no. 7 (2023): 3246-3257.
Download Paper
Published in IEEE Journal of Biomedical and Health Informatics, 2023
We developed RelapsePredNet, a deep learning model to automatically predict psychotic relapses using smartphone data.
Recommended citation: Lamichhane, Bishal, Joanne Zhou, and Akane Sano. "Psychotic relapse prediction in schizophrenia patients using a personalized mobile sensing-based supervised deep learning model." IEEE Journal of Biomedical and Health Informatics 27, no. 7 (2023): 3246-3257.
Download Paper
Published in IEEE International Conference on Communications, 2023
We provide a novel application of Unsupervised representation/clustering for node identification in wireless networks.
Recommended citation: Barati, C. N., Lamichhane, B., Liao, S., Graves, E., Swami, A., & Sabharwal, A. (2023, May). Unsupervised Wireless Diarization: A Potential New Attack on Encrypted Wireless Networks. In ICC 2023-IEEE International Conference on Communications (pp. 2312-2318). IEEE.
Download Paper
Published in Behavioural neurology, 2023
We demonstrate high suicidality classification using multimodal impulsivity representation.
Recommended citation: Moukaddam, N., Lamichhane, B., Salas, R., Goodman, W., & Sabharwal, A. (2023). Modeling suicidality with multimodal impulsivity characterization in participants with mental health disorder. Behavioural neurology, 2023(1), 8552180.
Download Paper
Published in Scientific Reports, 2024
We develop mobile sensing-based depression severity prediction in a cohort of healthy, depressed, and psychotic individuals.
Recommended citation: Lamichhane, B., Moukaddam, N., & Sabharwal, A. (2024). Mobile sensing-based depression severity assessment in participants with heterogeneous mental health conditions. Scientific Reports, 14(1), 2024
Download Paper
Published in IEEE BHI (to appear), 2024
Sensation seeking prediction model based on fMRI where we demonstrate the need for age-specific modeling.
Recommended citation: Zishen Li, Bishal Lamichhane, Ankit Patel, Ramiro Salas, Nidal Moukaddam, and Ashutosh S (2024), Predicting Sensation-Seeking from Resting-State fMRI: The Need for Age-Specific Models, IEEE BHI 2024.
Download Paper
Published:
This is a description of your talk, which is a markdown files 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.