Using Data Science To Center Patient Perspectives in Mechanism Discovery

NCT ID: NCT06233968

Last Updated: 2025-06-25

Study Results

Results pending

The study team has not published outcome measurements, participant flow, or safety data for this trial yet. Check back later for updates.

Basic Information

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Recruitment Status

ACTIVE_NOT_RECRUITING

Total Enrollment

33 participants

Study Classification

OBSERVATIONAL

Study Start Date

2024-03-19

Study Completion Date

2026-12-05

Brief Summary

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Including patient perspectives when developing new therapy interventions is crucial because it can help to understand response heterogeneity and promote engagement. Yet, analyzing patient interview data is difficult and time-consuming. This study aims to explore the potential for natural language processing and deep learning to analyze patient interviews and identify potential ways in which therapy leads to psychological change. This study will recruit participants from an existing clinical service that offers a 16-week online group therapy model (and adjunct individual therapy sessions) called Program for Alleviating and Resolving Trauma and Stress (PARTS) based on a therapy called Internal Family Systems (IFS). The investigators will use a mixed methods approach, applying natural language processing and deep learning to develop models that identify potential mechanisms of change. These models will be based on patient perspectives of psychological change, as expressed in interviews, and be compared to models based on clinical measures.

Detailed Description

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Demand for cost-effective, novel, scalable trauma-focused interventions is high. Prevalence rates of posttraumatic stress disorder (PTSD) and Complex PTSD in US community mental health clinics are estimated to be as high as 50%. Yet response heterogeneity to PTSD interventions remains high, with non-response rates reaching 50-60% and dropout rates for traditional interventions (i.e., cognitive behavioral, exposure therapies) at 30-40%. Moreover, research populations in typical stepwise, efficacy-driven clinical research trials are often characterized by strict exclusion criteria and low representation from underrepresented communities. The homogeneous nature of efficacy-based research populations creates an incomplete picture, especially in public sector and community-based mental health facilities. Studies have suggested not only does this homogeneity limit effectiveness across diverse populations, but may contribute to exacerbating health disparities.

Engaging patient perspectives is crucial to research because it can provide insight into response heterogeneity and engagement, ultimately leading to an understanding of mechanisms and creating more patient-centered interventions. One way to center the patient's voice and increase the potential of identifying unique mechanisms of change for a novel therapy, is to use qualitative interviews because it directly accesses the lived experience and its context. Despite the potential benefits of utilizing qualitative data in stepwise randomized control trials, several obstacles persist, including resource constraints, the inability to quantify interactive elements, and concerns regarding the practical value of the gathered information. Innovative methods that reliably and rapidly extract value-laden, relevant themes, and discern non-verbal conversational elements may facilitate the integration of patient experience and inclusion of their perspectives in clinical intervention trials.

This single-arm study aims to evaluate the feasibility of using natural language processing (NLP) and deep learning to identify potential mechanisms of PTSD symptom change from patient interviews. The study will utilize ongoing cohorts from a clinical service that offers a 16-week, live-online group therapy model (and adjunct individual therapy sessions) called Program For Alleviating And Resolving Trauma and Stress (PARTS) that uses the IFS model. The investigators will use a convergent mixed methods approach applying machine learning and natural language processing to develop models that identify potential mechanisms of change.

Analysis: The investigators will use several different methods to develop our models including Latent Dirichlet Allocation, pre-trained language models, transfer learning (recurrent neural networks, generative adversarial network), and penalized regression-based models. These models will use data derived from patient perspectives of psychological change, as expressed in interviews, and will be compared to models derived from clinical measures. The study will use standard performance metrics and cross-validation scores to evaluate comparative performance of the models. As an exploratory aim, the study will evaluate the feasibility of using features derived from language processing models and clinical measures to predict individual therapy visits post-intervention. The exploratory data will also include structured clinical data, social determinants of health, and therapy-based utilization (dates, provider type, length).

Anticipated results: The development of two validated models: one derived from patient interview data and the other based on clinical measures to comprehensively identify mechanisms of change from group-based therapy models of IFS for PTSD.

Conditions

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Posttraumatic Stress Disorder Complex Post-Traumatic Stress Disorder

Study Design

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Observational Model Type

COHORT

Study Time Perspective

PROSPECTIVE

Eligibility Criteria

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Inclusion Criteria

Must be enrolled in the clinical service offering online PARTS group and approved and confirmed to start by the clinical team.

Have sufficient English fluency and literacy skills to understand the consent process, procedures and questionnaires and have the ability to provide written informed consent.

Have access to the internet and an electronic device with adequate data capacity; to complete questionnaires online and participate in two online video interviews.

Must be willing to complete online computerized assessments both at baseline and post-intervention; and participate in two, one-hour videotaped interviews one at baseline and one 2-4 weeks post-intervention.

Exclusion Criteria

Inability to complete an informed consent assessment AND/OR inability to complete baseline study assessment procedures (due to cognitive deficit, non-proficiency in English literacy, or any other reason).

Expected medical hospitalization in 24 weeks from the date of enrollment.

Expected incarceration in 24 weeks from the date of enrollment.

Individuals who are pregnant with a due date within 24 weeks after study consent.

Insufficient internet connection to conduct online interviews or computerized assessments.
Minimum Eligible Age

18 Years

Maximum Eligible Age

75 Years

Eligible Sex

ALL

Accepts Healthy Volunteers

Yes

Sponsors

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Foundation for Self Leadership

OTHER

Sponsor Role collaborator

Cambridge Health Alliance

OTHER

Sponsor Role lead

Responsible Party

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Responsibility Role SPONSOR

Principal Investigators

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Zev Schuman-Olivier, MD

Role: PRINCIPAL_INVESTIGATOR

Center for Mindfulness and Compassion, Cambridge Health Alliance

Dilara Ally, PhD

Role: PRINCIPAL_INVESTIGATOR

Center for Mindfulness and Compassion, Cambridge Health Alliance

Locations

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Cambridge Health Alliance

Malden, Massachusetts, United States

Site Status

Countries

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United States

References

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Spoont MR, Murdoch M, Hodges J, Nugent S. Treatment receipt by veterans after a PTSD diagnosis in PTSD, mental health, or general medical clinics. Psychiatr Serv. 2010 Jan;61(1):58-63. doi: 10.1176/ps.2010.61.1.58.

Reference Type BACKGROUND
PMID: 20044419 (View on PubMed)

Schottenbauer MA, Glass CR, Arnkoff DB, Tendick V, Gray SH. Nonresponse and dropout rates in outcome studies on PTSD: review and methodological considerations. Psychiatry. 2008 Summer;71(2):134-68. doi: 10.1521/psyc.2008.71.2.134.

Reference Type BACKGROUND
PMID: 18573035 (View on PubMed)

Adams-Campbell LL, Ahaghotu C, Gaskins M, Dawkins FW, Smoot D, Polk OD, Gooding R, DeWitty RL. Enrollment of African Americans onto clinical treatment trials: study design barriers. J Clin Oncol. 2004 Feb 15;22(4):730-4. doi: 10.1200/JCO.2004.03.160.

Reference Type BACKGROUND
PMID: 14966098 (View on PubMed)

Erves JC, Mayo-Gamble TL, Malin-Fair A, Boyer A, Joosten Y, Vaughn YC, Sherden L, Luther P, Miller S, Wilkins CH. Needs, Priorities, and Recommendations for Engaging Underrepresented Populations in Clinical Research: A Community Perspective. J Community Health. 2017 Jun;42(3):472-480. doi: 10.1007/s10900-016-0279-2.

Reference Type BACKGROUND
PMID: 27812847 (View on PubMed)

Other Identifiers

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13664

Identifier Type: -

Identifier Source: org_study_id

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