Graphical Models With Latent Variables and Their Application in Cognitive Approaches to Neuropsychological Disorders
Lead Research Organisation:
MRC Human Nutrition Research Group
Abstract
Many studies in the medical sciences involve the measurement of several aspects on each individual on repeated occasions. Often, scientific interest is in studying the inter-relationships, which might be causal, between measurements. Graphical modelling provides a strategy for translating substantive hypotheses about causal relationships into a statistical model. Further, scientifically relevant results from the statistical analysis of the data can be communicated through an intuitively natural graphical representation of the fitted model. The aim of this project is to make use of recent developments in the area of graphical models to advance research in medical contexts, including developmental psychology, neuropsychology and brain ageing. This project will focus on two areas: 1) assessment of decline in the cognitive functions of Alzheimer‘s patients and 2) identification of particular executive and social-cognitive problems associated with focal epilepsy in children. Evaluation of data to study development and deterioration of cognitive performance in individuals requires the consideration of latent variables to represent qualities of individual subjects that cannot be measured directly. Often the directly observed data are qualitative, for example success or failure on a psychometric test. A major goal is to develop a flexible modelling strategy for data of this kind.
Technical Summary
This proposal applies recent advances in graphical models to the issue of developmental change within psychological disorders. I will address two key issues where graphical models can be applied in this field. First, their use will be explored to assess models of decline in the cognitive functions of Alzheimer‘s patients. Secondly, they will be employed to identify particular executive and social-cognitive problems associated with focal epilepsy in children, which have been discussed by clinicians but not fully reported in the research literature
Graphical models are useful because they represent stochastic dependence structures amongst multivariate measurements in a way that relates naturally to substantive scientific hypotheses about the underlying inter-relationships. Research in psychology typically involves the analysis of longitudinal multivariate binary, ordinal or continuous data or a combination of these. In addition, latent variables are often present as a natural choice to represent unobservable, but typically inter-related, characteristics of participants.
In this proposal I will restrict my attention to those graphs in which the latent variables have a substantive interpretation. I will adopt the assumption that the distribution of the observed variables may be meaningfully interpreted as arising after marginalising over the latent variables. A major goal of this project is to investigate a statistical modelling approach that correctly represents all and only the dependence relations holding among the observed variables, reflecting the influence of the latent variables. My approach will consider the nature of the observed measurements, discrete or continue, and propose suitable sampling distributions for modelling accordingly.
Graphical models are useful because they represent stochastic dependence structures amongst multivariate measurements in a way that relates naturally to substantive scientific hypotheses about the underlying inter-relationships. Research in psychology typically involves the analysis of longitudinal multivariate binary, ordinal or continuous data or a combination of these. In addition, latent variables are often present as a natural choice to represent unobservable, but typically inter-related, characteristics of participants.
In this proposal I will restrict my attention to those graphs in which the latent variables have a substantive interpretation. I will adopt the assumption that the distribution of the observed variables may be meaningfully interpreted as arising after marginalising over the latent variables. A major goal of this project is to investigate a statistical modelling approach that correctly represents all and only the dependence relations holding among the observed variables, reflecting the influence of the latent variables. My approach will consider the nature of the observed measurements, discrete or continue, and propose suitable sampling distributions for modelling accordingly.
Publications

Briggs V
(2018)
United Kingdom Catheter Study - Protocol Synopsis.
in Peritoneal dialysis international : journal of the International Society for Peritoneal Dialysis

Fallowfield LJ
(2012)
Evaluation of an educational program to improve communication with patients about early-phase trial participation.
in The oncologist

Jenkins V
(2013)
Patients' and oncologists' views on the treatment and care of advanced ovarian cancer in the U.K.: results from the ADVOCATE study.
in British journal of cancer


Lobban F
(2012)
The Role of Beliefs About Mood Swings in Determining Outcome in Bipolar Disorder
in Cognitive Therapy and Research

Simcock R
(2013)
ARIX: A randomised trial of acupuncture v oral care sessions in patients with chronic xerostomia following treatment of head and neck cancer
in Annals of Oncology

Solis-Trapala I
(2015)
Sequences of Regressions Distinguish Nonmechanical from Mechanical Associations between Metabolic Factors, Body Composition, and Bone in Healthy Postmenopausal Women.
in The Journal of nutrition


Description | ARIX PMID: 23868190 and 23764819 |
Geographic Reach | National |
Policy Influence Type | Citation in systematic reviews |
Guideline Title | Canadian Network for Mood and Anxiety Treatments (CANMAT) and International Society for Bipolar Disorders (ISBD) collaborative update of CANMAT guidelines for the management of patients with bipolar disorder |
Description | Bipolar PMID: 23237061 |
Geographic Reach | National |
Policy Influence Type | Citation in clinical guidelines |
Description | MORECare PMID: 23652842 |
Geographic Reach | National |
Policy Influence Type | Participation in a guidance/advisory committee |
Description | Inter-CEPt: Intervening to eliminate the centre effect variation in home dialysis use |
Amount | £1,110,815 (GBP) |
Funding ID | NIHR128364 |
Organisation | National Institute for Health Research |
Sector | Public |
Country | United Kingdom |
Start | 06/2020 |
End | 02/2023 |
Description | Bipolar disorder |
Organisation | Lancaster University |
Department | Spectrum Centre for Mental Health Research |
Country | United Kingdom |
Sector | Academic/University |
PI Contribution | I undertook the statistical modelling of the data and contributed to the interpretation and reporting of results |
Collaborator Contribution | Study conception and design, data collection and scientific direction |
Impact | We published three articles. The disciplines involved are psychology, mental health and statistics |
Start Year | 2010 |
Description | Cognitive function in adults |
Organisation | Lancaster University |
Department | Department of Psychology |
Country | United Kingdom |
Sector | Academic/University |
PI Contribution | I undertook the statistical modelling of the data and contributed to the interpretation and reporting of results |
Collaborator Contribution | Study conception and design, data collection and scientific direction of a study investigating the role of antisaccade tests on working memory in adults |
Impact | We have one published paper. The disciplines involved are psychology and statistics |
Start Year | 2010 |
Description | Latent Markov Modelling |
Organisation | University of Perugia |
Department | Department of Economics, Finance, and Statistics |
Country | Italy |
Sector | Academic/University |
PI Contribution | Intelectual input into my collaborator's research |
Collaborator Contribution | Intelectual input into my research |
Impact | We have published a methodological paper in Psychometrika. |
Start Year | 2008 |
Description | Psycho-oncology |
Organisation | University of Sussex |
Department | Brighton and Sussex Medical School |
Country | United Kingdom |
Sector | Academic/University |
PI Contribution | I contributed to the study design, conducted the statistical modelling of the data and contributed to the interpretation and reporting of results |
Collaborator Contribution | Study conception and design, data collection and scientific direction of: 1) a study concerned with communication and comprehension about phase 1 oncology trials 2) a randomised clinical trial of acupuncture v oral care in patients with chronic xerostomia 3) a study to assess patients' and oncologists' views on the treatment and care of advanced ovarian cancer in the UK |
Impact | We have published six articles. This collaboration involves the following disciplines: Medical Oncology, Psycho-Oncology and Statistics |
Start Year | 2009 |