Project: Complexity-driven modelling of macro-conditions in patients with Bodily Distress Syndrome
2021-11-01 – 2025-10-31
- Abstract
The complex adaptive systems perspective might lead to new insights into the bodily distress syndrome (BDS), an umbrella term for disorders which are characterised by symptoms without clear biological cause. It tells us that such symptoms might stem from a disruption of the human regulatory system, which can be observed through a reduced complexity in physiological signals like heart-rate variability (HRV) and micromovements. For example, in the case of chronic fatigue syndrome (CFS), clinical tests have confirmed a reduced complexity in patients’ physical activity and HRV signals. This opens up new opportunities for diagnosis and treatment, though suitable techniques to reliably track the personalised evolution of complexity within patients are currently non-existent. My proposed research intends to fill this gap from an engineering perspective. I will design new techniques to quantify non-stationary complexity in various physiological signals. From there on, I will investigate whether measured complexity can serve as a biomarker for tracking changes in the macro-condition of BDS patients. The final step is to devise a multi-modal predictive model which takes several types of past observations as an input in order to predict changes in BDS patients’ level of functioning. The proposed research is motivated by the need for smart self-monitoring, which could in the end allow BDS patients to gain back control over their lives which they often feel is missing.
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- Journal Article
- A1
- open access
Using causal effect estimation to evaluate occupational stress factors during a weekend on-call shift among general practitioners in training
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- Journal Article
- A1
- open access
SimSUM : simulated benchmark with structured and unstructured medical records
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- Conference Paper
- C1
- open access
Prior knowledge injection into deep learning models predicting gene expression from whole slide images
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- Conference Paper
- C1
- open access
SynSUM – synthetic benchmark with structured and unstructured medical records
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- Journal Article
- A1
- open access
Why synthetic discoveries are not only a problem of differentially private synthetic data
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- Conference Paper
- C1
- open access
Debiasing synthetic data generated by deep generative models
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- Conference Paper
- P1
- open access
The real deal behind the artificial appeal : inferential utility of tabular synthetic data
(2024) UNCERTAINTY IN ARTIFICIAL INTELLIGENCE. In Proceedings of Machine Learning Research (PMLR) 244. p.966-996 -
- Conference Paper
- P1
- open access
Clinical reasoning over tabular data and text with bayesian networks
(2024) ARTIFICIAL INTELLIGENCE IN MEDICINE, PT I, AIME 2024. In Lecture Notes in Artificial Intelligence 14844. p.229-250 -
- Journal Article
- A1
- open access
Time-dependent complexity characterisation of activity patterns in patients with Chronic Fatigue Syndrome
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- Conference Paper
- C1
- open access
Synthetic data : can we trust statistical estimators?