disease trajectory
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- Europe > Spain > Catalonia > Barcelona Province > Barcelona (0.04)
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- North America > United States > Maryland > Baltimore (0.04)
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.04)
- Research Report > Experimental Study (0.93)
- Research Report > New Finding (0.68)
- Health & Medicine > Therapeutic Area > Immunology (0.68)
- Health & Medicine > Therapeutic Area > Neurology (0.46)
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Submitted by Assigned_Reviewer_1 Q1 The authors design and fit a hierarchical Bayesian model for predicting disease trajectories (i.e., a scalar measure of disease severity measured throughout the course of the disease) for individual patients. The overall model is an additive combination of a a number of terms including: (1) a population-level term, (2) a subpopulation term, (3) an individual term, (4) a GP term for structured errors. Each of these terms is a function of time, which is modeled parametrically in terms of the coefficients on pre-defined basis expansions (linear and/or B-splines). The subpopulation term involves a discrete mixture model, and the individual level term is a Bayesian linear regression. Distributions are chosen to be Gaussian, which makes most steps of inference and learning work out nicely.
- Information Technology > Artificial Intelligence > Machine Learning > Statistical Learning > Regression (0.49)
- Information Technology > Artificial Intelligence > Representation & Reasoning > Uncertainty > Bayesian Inference (0.35)
- Information Technology > Artificial Intelligence > Machine Learning > Learning Graphical Models > Directed Networks > Bayesian Learning (0.35)
A Framework for Individualizing Predictions of Disease Trajectories by Exploiting Multi-Resolution Structure
For many complex diseases, there is a wide variety of ways in which an individual can manifest the disease. The challenge of personalized medicine is to develop tools that can accurately predict the trajectory of an individual's disease, which can in turn enable clinicians to optimize treatments. We represent an individual's disease trajectory as a continuous-valued continuous-time function describing the severity of the disease over time. We propose a hierarchical latent variable model that individualizes predictions of disease trajectories.
Temporal Patterns of Multiple Long-Term Conditions in Individuals with Intellectual Disability Living in Wales: An Unsupervised Clustering Approach to Disease Trajectories
Kousovista, Rania, Cosma, Georgina, Abakasanga, Emeka, Akbari, Ashley, Zaccardi, Francesco, Jun, Gyuchan Thomas, Kiani, Reza, Gangadharan, Satheesh
Identifying and understanding the co-occurrence of multiple long-term conditions (MLTC) in individuals with intellectual disabilities (ID) is vital for effective healthcare management. These individuals often face earlier onset and higher prevalence of MLTCs, yet specific co-occurrence patterns remain unexplored. This study applies an unsupervised approach to characterise MLTC clusters based on shared disease trajectories using electronic health records (EHRs) from 13069 individuals with ID in Wales (2000-2021). Disease associations and temporal directionality were assessed, followed by spectral clustering to group shared trajectories. The population consisted of 52.3% males and 47.7% females, with an average of 4.5 conditions per patient. Males under 45 formed a single cluster dominated by neurological conditions (32.4%), while males above 45 had three clusters, the largest characterised circulatory (51.8%). Females under 45 formed one cluster with digestive conditions (24.6%) as most prevalent, while those aged 45 and older showed two clusters: one dominated by circulatory (34.1%), and the other by digestive (25.9%) and musculoskeletal (21.9%) system conditions. Mental illness, epilepsy, and reflux were common across groups. These clusters offer insights into disease progression in individuals with ID, informing targeted interventions and personalised healthcare strategies.
- Europe > United Kingdom > England > Leicestershire > Loughborough (0.04)
- Europe > United Kingdom > England > Leicestershire > Leicester (0.04)
- Oceania > New Zealand > North Island > Auckland Region > Auckland (0.04)
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- Research Report > New Finding (1.00)
- Research Report > Experimental Study (1.00)
Semi-Supervised Generative Models for Disease Trajectories: A Case Study on Systemic Sclerosis
Trottet, Cécile, Schürch, Manuel, Allam, Ahmed, Barua, Imon, Petelytska, Liubov, Distler, Oliver, Hoffmann-Vold, Anna-Maria, Krauthammer, Michael, collaborators, the EUSTAR
We propose a deep generative approach using latent temporal processes for modeling and holistically analyzing complex disease trajectories, with a particular focus on Systemic Sclerosis (SSc). We aim to learn temporal latent representations of the underlying generative process that explain the observed patient disease trajectories in an interpretable and comprehensive way. To enhance the interpretability of these latent temporal processes, we develop a semi-supervised approach for disentangling the latent space using established medical knowledge. By combining the generative approach with medical definitions of different characteristics of SSc, we facilitate the discovery of new aspects of the disease. We show that the learned temporal latent processes can be utilized for further data analysis and clinical hypothesis testing, including finding similar patients and clustering SSc patient trajectories into novel sub-types. Moreover, our method enables personalized online monitoring and prediction of multivariate time series with uncertainty quantification.
- Europe > Switzerland > Zürich > Zürich (0.15)
- Europe > Norway > Eastern Norway > Oslo (0.04)
- North America > United States > Massachusetts > Middlesex County > Cambridge (0.04)
- Europe > Ukraine (0.04)
Clustering of Disease Trajectories with Explainable Machine Learning: A Case Study on Postoperative Delirium Phenotypes
Zheng, Xiaochen, Schürch, Manuel, Chen, Xingyu, Komninou, Maria Angeliki, Schüpbach, Reto, Allam, Ahmed, Bartussek, Jan, Krauthammer, Michael
The identification of phenotypes within complex diseases or syndromes is a fundamental component of precision medicine, which aims to adapt healthcare to individual patient characteristics. Postoperative delirium (POD) is a complex neuropsychiatric condition with significant heterogeneity in its clinical manifestations and underlying pathophysiology. We hypothesize that POD comprises several distinct phenotypes, which cannot be directly observed in clinical practice. Identifying these phenotypes could enhance our understanding of POD pathogenesis and facilitate the development of targeted prevention and treatment strategies. In this paper, we propose an approach that combines supervised machine learning for personalized POD risk prediction with unsupervised clustering techniques to uncover potential POD phenotypes. We first demonstrate our approach using synthetic data, where we simulate patient cohorts with predefined phenotypes based on distinct sets of informative features. We aim to mimic any clinical disease with our synthetic data generation method. By training a predictive model and applying SHAP, we show that clustering patients in the SHAP feature importance space successfully recovers the true underlying phenotypes, outperforming clustering in the raw feature space. We then present a case study using real-world data from a cohort of elderly surgical patients. The results showcase the utility of our approach in uncovering clinically relevant subtypes of complex disorders like POD, paving the way for more precise and personalized treatment strategies.
- North America > United States > California > Los Angeles County > Los Angeles (0.14)
- Europe > Switzerland > Zürich > Zürich (0.05)
- Asia > Middle East > Jordan (0.04)
- Research Report > New Finding (1.00)
- Research Report > Experimental Study (1.00)
- Health & Medicine > Therapeutic Area > Psychiatry/Psychology (1.00)
- Health & Medicine > Therapeutic Area > Neurology (1.00)
A Framework for Individualizing Predictions of Disease Trajectories by Exploiting Multi-Resolution Structure
For many complex diseases, there is a wide variety of ways in which an individual can manifest the disease. The challenge of personalized medicine is to develop tools that can accurately predict the trajectory of an individual's disease, which can in turn enable clinicians to optimize treatments. We represent an individual's disease trajectory as a continuous-valued continuous-time function describing the severity of the disease over time. We propose a hierarchical latent variable model that individualizes predictions of disease trajectories.
- North America > United States > Maryland > Baltimore (0.04)
- Europe > United Kingdom > England > Cambridgeshire > Cambridge (0.04)
- Research Report > Experimental Study (0.93)
- Research Report > New Finding (0.68)
- Health & Medicine > Therapeutic Area > Immunology (0.68)
- Health & Medicine > Therapeutic Area > Neurology (0.46)
Disease Trajectory Maps
Medical researchers are coming to appreciate that many diseases are in fact complex, heterogeneous syndromes composed of subpopulations that express different variants of a related complication. Longitudinal data extracted from individual electronic health records (EHR) offer an exciting new way to study subtle differences in the way these diseases progress over time. In this paper, we focus on answering two questions that can be asked using these databases of longitudinal EHR data. First, we want to understand whether there are individuals with similar disease trajectories and whether there are a small number of degrees of freedom that account for differences in trajectories across the population. Second, we want to understand how important clinical outcomes are associated with disease trajectories. To answer these questions, we propose the Disease Trajectory Map (DTM), a novel probabilistic model that learns low-dimensional representations of sparse and irregularly sampled longitudinal data. We propose a stochastic variational inference algorithm for learning the DTM that allows the model to scale to large modern medical datasets. To demonstrate the DTM, we analyze data collected on patients with the complex autoimmune disease, scleroderma. We find that DTM learns meaningful representations of disease trajectories and that the representations are significantly associated with important clinical outcomes.
- North America > United States > Maryland > Baltimore (0.04)
- Europe > Spain > Catalonia > Barcelona Province > Barcelona (0.04)
- Europe > Czechia > Prague (0.04)
- Health & Medicine > Health Care Technology > Medical Record (0.54)
- Health & Medicine > Therapeutic Area > Immunology (0.34)
Representing Outcome-driven Higher-order Dependencies in Graphs of Disease Trajectories
Krieg, Steven J., Chawla, Nitesh V., Feldman, Keith
In this era of digital medicine, computational analysis of historical patient data is a foundational approach for generating evidence-based insights into patient care, as well as developing new knowledge surrounding the etiology, risk factors, and progression of health conditions [1, 2]. While each assessment of an individual occurs at a discrete point in time, it is critical to recognize that data collected from these observations are not independent. The nature of human disease and the structure of the healthcare system itself impose temporal dependencies that connect information across an individual's lifetime [3-5]. As a result, appropriately utilizing historical data requires the capability to model not only the incidence of prior events but also the relationships among data over time. To capture these complex interactions between events over time, researchers have widely adopted supervised neural architectures [6, 7]. In contrast to traditional, unsupervised trajectory models such as latent growth curves, group-based trajectory models, and temporal clustering [8, 9], these techniques are designed to directly learn relationships between patterns in sequential data and outcome incidence.
- North America > United States > Missouri > Jackson County > Kansas City (0.14)
- North America > United States > Tennessee > Anderson County > Oak Ridge (0.04)
- North America > United States > Indiana > St. Joseph County > Notre Dame (0.04)