Predoc-seminarium: Mahbub Ul Alam
Seminarium
Datum: fredag 25 augusti 2023
Tid: 13.00 – 16.00
Plats: Rum L50, DSV, Nodhuset, Borgarfjordsgatan 12, Kista
Välkommen till ett predoc-seminarium om hur maskininlärning kan användas för att upptäcka sepsis och covid-19! Mahbub Ul Alam, doktorand på DSV, är respondent.
25 augusti 2023 presenterar doktoranden Mahbub Ul Alam sitt pågående arbete med titeln ”Improving COVID-19 & Early Sepsis Detection with Machine Learning & Internet of Medical Things”. Seminariet genomförs på Institutionen för data- och systemvetenskap (DSV) vid Stockholms universitet.
Respondent: Mahbub Ul Alam, DSV
Opponent: Saguna Saguna, Luleå tekniska universitet
Huvudhandledare: Rahim Rahmani, DSV
Handledare: Jaakko Hollmén, DSV
Närmast berörda professor: Panagiotis Papapetrou, DSV
Sammanfattning på engelska
This thesis critically examines the transformative implications of Machine Learning (ML), the Internet of Medical Things (IoMT), and Clinical Decision Support Systems (CDSSs) in contemporary healthcare landscapes. The shift toward patient-centric models has precipitated a need for personalized, participatory care, which these technologies are primed to provide. With the advent of IoMT, a potent platform for data aggregation, analysis, and transmission has been constructed, thereby empowering healthcare practitioners to render more efficacious care. The utility of IoMT has been accentuated amid the COVID-19 pandemic, notably in remote patient surveillance and controlling disease proliferation.
The fusion of ML-driven CDSSs and IoMT harbors the potential to restructure healthcare by providing real-time decision-making assistance, thereby augmenting patient health outcomes. The capability of ML to scrutinize intricate medical datasets, discern patterns and correlations, and accommodate evolving conditions bolster its predictive competencies incrementally. This thesis elaborates on the development of IoMT-grounded CDSS applications targeting afflictions such as COVID-19 and early sepsis, leveraging medical data and state-of-the-art ML methods.
The research underscores the criticality of predictive capacities, addressing pertinent issues such as data annotation scarcity, data sparsity, and data heterogeneity, as well as the preservation of security and privacy, and ensuring widespread accessibility. By concentrating on these pivotal areas and enhancing the usability and interpretability of ML models, a refined healthcare paradigm can be realized, contributing to the evolution of global healthcare. The thesis prioritizes ethical considerations, ensuring that the research adheres to the highest ethical standards. The potential repercussions of these technologies in clinical environments, specifically the deployment of the CDSS, are examined, underlining future trajectories for research and progress in healthcare technology.
Essentially, this thesis aims to enhance stakeholder comprehension in this crucial field while acknowledging the need for ongoing efforts to maintain progress.
Senast uppdaterad: 14 augusti 2023
Sidansvarig: Institutionen för data- och systemvetenskap, DSV