Javascript must be enabled to continue!
Data-driven neuroanatomical subtypes of primary progressive aphasia
View through CrossRef
Abstract
The primary progressive aphasias are rare, language-led dementias, with three main variants: semantic, non-fluent/agrammatic and logopenic. Although the semantic variant has a clear neuroanatomical profile, the non-fluent/agrammatic and logopenic variants are difficult to discriminate from neuroimaging. Previous phenotype-driven studies have characterized neuroanatomical profiles of each variant on MRI. In this work, we used a machine learning algorithm known as SuStaIn to discover data-driven neuroanatomical ‘subtype’ progression profiles and performed an in-depth subtype–phenotype analysis to characterize the heterogeneity of primary progressive aphasia.
Our study included 270 participants with primary progressive aphasia seen for research in the UCL Queen Square Institute of Neurology Dementia Research Centre, with follow-up scans available for 137 participants. This dataset included individuals diagnosed with all three main variants (semantic, n = 94; non-fluent/agrammatic, n = 109; logopenic, n = 51) and individuals with unspecified primary progressive aphasia (n = 16). A dataset of 66 patients (semantic, n = 37; non-fluent/agrammatic, n = 29) from the ARTFL LEFFTDS Longitudinal Frontotemporal Lobar Degeneration (ALLFTD) Research Study was used to validate our results. MRI scans were segmented, and SuStaIn was used on 19 regions of interest to identify neuroanatomical profiles independent of the diagnosis. We assessed the assignment of subtypes and stages, in addition to their longitudinal consistency.
We discovered four neuroanatomical subtypes of primary progressive aphasia, labelled S1 (left temporal), S2 (insula), S3 (temporoparietal) and S4 (frontoparietal), exhibiting robustness to statistical scrutiny. S1 was correlated strongly with the semantic variant, whereas S2, S3 and S4 showed mixed associations with the logopenic and non-fluent/agrammatic variants. Notably, S3 displayed a neuroanatomical signature akin to a logopenic-only signature, yet a significant proportion of logopenic cases were allocated to S2. The non-fluent/agrammatic variant demonstrated diverse associations with S2, S3 and S4. No clear relationship emerged between any of the neuroanatomical subtypes and the unspecified cases. At first follow-up, subtype assignment was stable for 84% of patients, and stage assignment was stable for 91.9% of patients. We partially validated our findings in the ALLFTD dataset, finding comparable qualitative patterns.
Our study, leveraging machine learning on a large primary progressive aphasia dataset, delineated four distinct neuroanatomical patterns. Our findings suggest that separable spatiotemporal neuroanatomical phenotypes do exist within the primary progressive aphasia spectrum, but that these are noisy, particularly for the non-fluent/agrammatic non-fluent/agrammatic and logopenic variants. Furthermore, these phenotypes do not always conform to standard formulations of clinico-anatomical correlation. Understanding the multifaceted profiles of the disease, encompassing neuroanatomical, molecular, clinical and cognitive dimensions, has potential implications for clinical decision support.
Title: Data-driven neuroanatomical subtypes of primary progressive aphasia
Description:
Abstract
The primary progressive aphasias are rare, language-led dementias, with three main variants: semantic, non-fluent/agrammatic and logopenic.
Although the semantic variant has a clear neuroanatomical profile, the non-fluent/agrammatic and logopenic variants are difficult to discriminate from neuroimaging.
Previous phenotype-driven studies have characterized neuroanatomical profiles of each variant on MRI.
In this work, we used a machine learning algorithm known as SuStaIn to discover data-driven neuroanatomical ‘subtype’ progression profiles and performed an in-depth subtype–phenotype analysis to characterize the heterogeneity of primary progressive aphasia.
Our study included 270 participants with primary progressive aphasia seen for research in the UCL Queen Square Institute of Neurology Dementia Research Centre, with follow-up scans available for 137 participants.
This dataset included individuals diagnosed with all three main variants (semantic, n = 94; non-fluent/agrammatic, n = 109; logopenic, n = 51) and individuals with unspecified primary progressive aphasia (n = 16).
A dataset of 66 patients (semantic, n = 37; non-fluent/agrammatic, n = 29) from the ARTFL LEFFTDS Longitudinal Frontotemporal Lobar Degeneration (ALLFTD) Research Study was used to validate our results.
MRI scans were segmented, and SuStaIn was used on 19 regions of interest to identify neuroanatomical profiles independent of the diagnosis.
We assessed the assignment of subtypes and stages, in addition to their longitudinal consistency.
We discovered four neuroanatomical subtypes of primary progressive aphasia, labelled S1 (left temporal), S2 (insula), S3 (temporoparietal) and S4 (frontoparietal), exhibiting robustness to statistical scrutiny.
S1 was correlated strongly with the semantic variant, whereas S2, S3 and S4 showed mixed associations with the logopenic and non-fluent/agrammatic variants.
Notably, S3 displayed a neuroanatomical signature akin to a logopenic-only signature, yet a significant proportion of logopenic cases were allocated to S2.
The non-fluent/agrammatic variant demonstrated diverse associations with S2, S3 and S4.
No clear relationship emerged between any of the neuroanatomical subtypes and the unspecified cases.
At first follow-up, subtype assignment was stable for 84% of patients, and stage assignment was stable for 91.
9% of patients.
We partially validated our findings in the ALLFTD dataset, finding comparable qualitative patterns.
Our study, leveraging machine learning on a large primary progressive aphasia dataset, delineated four distinct neuroanatomical patterns.
Our findings suggest that separable spatiotemporal neuroanatomical phenotypes do exist within the primary progressive aphasia spectrum, but that these are noisy, particularly for the non-fluent/agrammatic non-fluent/agrammatic and logopenic variants.
Furthermore, these phenotypes do not always conform to standard formulations of clinico-anatomical correlation.
Understanding the multifaceted profiles of the disease, encompassing neuroanatomical, molecular, clinical and cognitive dimensions, has potential implications for clinical decision support.
Related Results
Data-driven neuroanatomical subtypes of primary progressive aphasia
Data-driven neuroanatomical subtypes of primary progressive aphasia
Abstract
The primary progressive aphasias are rare, language-led dementias, with three main variants: semantic, non-fluent/agrammatic, and logopenic. Whilst semanti...
Characteristics of Aphasia in Ischemic Stroke Patients at Dr. Mahar Mardjono National Brain Center Hospital Indonesia in 2021
Characteristics of Aphasia in Ischemic Stroke Patients at Dr. Mahar Mardjono National Brain Center Hospital Indonesia in 2021
Highlights:
1. To author’s knowledge, this study is the first study done in National Brain Center Hospital In Jakarta2. No similar studies have been done during the pandemic era3. ...
Aphasia in acute stroke: Incidence, determinants, and recovery
Aphasia in acute stroke: Incidence, determinants, and recovery
AbstractKnowledge of the frequency and remission of aphasia is essential for the rehabilitation of stroke patients and provides insight into the brain organization of language. We ...
More than a communication disorder: inequities in the financial toxicity of post-stroke aphasia
More than a communication disorder: inequities in the financial toxicity of post-stroke aphasia
IntroductionAphasia, a communication disorder often resulting from stroke, can have profound impacts on both health outcomes and financial wellbeing. While the physical and cogniti...
Systematic Review: Communication Model in Stroke Patients With Verbal Communication Disorders
Systematic Review: Communication Model in Stroke Patients With Verbal Communication Disorders
Abstract
Aphasia is a manifestation of the impact of stroke disease that affects communication abilities and occurs due to damage to the brain area that regulates the langu...
Incidence and predictors of post‐stroke aphasia: The Arcadia Stroke Registry
Incidence and predictors of post‐stroke aphasia: The Arcadia Stroke Registry
Background and purpose: Aphasia is an important post‐stroke sequela. We estimated the prevalence and main determinants of post‐stroke aphasia in the prefecture of Arcadia, Greece....
Crossed aphasia in a left-handed patient with non-fluent variant of primary progressive aphasia with left asymmetric brain SPECT
Crossed aphasia in a left-handed patient with non-fluent variant of primary progressive aphasia with left asymmetric brain SPECT
ABSTRACT Primary progressive aphasia is a clinical syndrome caused by neurodegeneration of areas and neural networks involved in language, usually in the left hemisphere. The term ...
Factors that influence social dignity in persons with aphasia in their contact with healthcare professionals: a systematic literature review of qualitative studies
Factors that influence social dignity in persons with aphasia in their contact with healthcare professionals: a systematic literature review of qualitative studies
Background: Persons living with aphasia have unique needs and challenges that would benefit from greater understanding among all health professionals. Aim: To explore which factor...

