Distinct brain morphometry patterns revealed by deep learning improve prediction of post-stroke aphasia severity

被引:0
|
作者
Teghipco, Alex [1 ]
Newman-Norlund, Roger [2 ]
Fridriksson, Julius [1 ]
Rorden, Christopher [2 ]
Bonilha, Leonardo [3 ]
机构
[1] Univ South Carolina, Arnold Sch Publ Hlth, Dept Commun Sci & Disorders, Columbia, SC 29208 USA
[2] Univ South Carolina, Coll Arts & Sci, Dept Psychol, Columbia, SC USA
[3] Univ South Carolina, Sch Med, Dept Neurol, Columbia, SC USA
来源
COMMUNICATIONS MEDICINE | 2024年 / 4卷 / 01期
关键词
LANGUAGE DEFICITS; STROKE; RECOVERY; ATROPHY; NEUROPLASTICITY; PROGNOSIS; DISEASE; LESIONS; MODEL; SIZE;
D O I
10.1038/s43856-024-00541-8
中图分类号
R-3 [医学研究方法]; R3 [基础医学];
学科分类号
1001 ;
摘要
Background Emerging evidence suggests that post-stroke aphasia severity depends on the integrity of the brain beyond the lesion. While measures of lesion anatomy and brain integrity combine synergistically to explain aphasic symptoms, substantial interindividual variability remains unaccounted. One explanatory factor may be the spatial distribution of morphometry beyond the lesion (e.g., atrophy), including not just specific brain areas, but distinct three-dimensional patterns.Methods Here, we test whether deep learning with Convolutional Neural Networks (CNNs) on whole brain morphometry (i.e., segmented tissue volumes) and lesion anatomy better predicts chronic stroke individuals with severe aphasia (N = 231) than classical machine learning (Support Vector Machines; SVMs), evaluating whether encoding spatial dependencies identifies uniquely predictive patterns.Results CNNs achieve higher balanced accuracy and F1 scores, even when SVMs are nonlinear or integrate linear or nonlinear dimensionality reduction. Parity only occurs when SVMs access features learned by CNNs. Saliency maps demonstrate that CNNs leverage distributed morphometry patterns, whereas SVMs focus on the area around the lesion. Ensemble clustering of CNN saliencies reveals distinct morphometry patterns unrelated to lesion size, consistent across individuals, and which implicate unique networks associated with different cognitive processes as measured by the wider neuroimaging literature. Individualized predictions depend on both ipsilateral and contralateral features outside the lesion.Conclusions Three-dimensional network distributions of morphometry are directly associated with aphasia severity, underscoring the potential for CNNs to improve outcome prognostication from neuroimaging data, and highlighting the prospective benefits of interrogating spatial dependence at different scales in multivariate feature space. Some stroke survivors experience difficulties understanding and producing language. We performed brain imaging to capture information about brain structure in stroke survivors and used it to predict which survivors have more severe language problems. We found that a type of artificial intelligence (AI) specifically designed to find patterns in spatial data was more accurate at this task than more traditional methods. AI found more complex patterns of brain structure that distinguish stroke survivors with severe language problems by analyzing the brain's spatial properties. Our findings demonstrate that AI tools can provide new information about brain structure and function following stroke. With further developments, these models may be able to help clinicians understand the extent to which language problems can be improved after a stroke. Teghipco et al. use deep learning to assess whether the spatial interdependencies of multivariate brain morphometry patterns contain information that can improve prediction of aphasia severity post-stroke. They demonstrate that, compared to classical machine learning, deep learning gives better predictions.
引用
收藏
页数:18
相关论文
共 50 条
  • [31] Listening to classical music influences brain connectivity in post-stroke aphasia: A pilot study
    Chea, Maryane
    Ben Salah, Amina
    Toba, Monica N.
    Zeineldin, Ryan
    Kaufmann, Brigitte
    Weill-Chounlamountry, Agnes
    Naccache, Lionel
    Bayen, Eleonore
    Bartolomeo, Paolo
    ANNALS OF PHYSICAL AND REHABILITATION MEDICINE, 2024, 67 (04)
  • [32] Meta-synthesis of family communication patterns during post-stroke vascular aphasia: Evidence to guide practice
    Ramazanu, Sheena
    Chisale, Master R. O.
    Baby, Priya
    Wu, Vivien Xi
    Mbakaya, Balwani C.
    WORLDVIEWS ON EVIDENCE-BASED NURSING, 2022, 19 (04) : 282 - 296
  • [33] Subacute Default Mode Network Dysfunction in the Prediction of Post-Stroke Depression Severity
    Lassalle-Lagadec, Saioa
    Sibon, Igor
    Dilharreguy, Bixente
    Renou, Pauline
    Fleury, Olivier
    Allard, Michele
    RADIOLOGY, 2012, 264 (01) : 218 - 224
  • [34] The Comparison and Interpretation of Machine-Learning Models in Post-Stroke Functional Outcome Prediction
    Chang, Shih-Chieh
    Chu, Chan-Lin
    Chen, Chih-Kuang
    Chang, Hsiang-Ning
    Wong, Alice M. K.
    Chen, Yueh-Peng
    Pei, Yu-Cheng
    DIAGNOSTICS, 2021, 11 (10)
  • [35] Clinical utility of brain computed tomography in prediction of post-stroke delirium
    Mateusz Czyzycki
    Agnieszka Glen
    Agnieszka Slowik
    Robert Chrzan
    Tomasz Dziedzic
    Journal of Neural Transmission, 2021, 128 : 207 - 213
  • [36] Deep Learning Approach Using Diffusion-Weighted Imaging to Estimate the Severity of Aphasia in Stroke Patients
    Jeong, Soo
    Lee, Eun-Jae
    Kim, Yong-Hwan
    Woo, Jin Cheol
    Ryu, On-Wha
    Kwon, Miseon
    Kwon, Sun U.
    Kim, Jong S.
    Kang, Dong-Wha
    JOURNAL OF STROKE, 2022, 24 (01) : 108 - +
  • [37] Machine learning-based prediction of post-stroke cognitive status using electroencephalography-derived brain network attributes
    Lee, Minwoo
    Hong, Yuseong
    An, Sungsik
    Park, Ukeob
    Shin, Jaekang
    Lee, Jeongjae
    Oh, Mi Sun
    Lee, Byung-Chul
    Yu, Kyung-Ho
    Lim, Jae-Sung
    Kang, Seung Wan
    FRONTIERS IN AGING NEUROSCIENCE, 2023, 15
  • [38] Functional connectivity of stimulus-evoked brain responses to natural speech in post-stroke aphasia
    Mehraram, Ramtin
    De Clercq, Pieter
    Kries, Jill
    Vandermosten, Maaike
    Francart, Tom
    JOURNAL OF NEURAL ENGINEERING, 2024, 21 (06)
  • [39] Effects of primary motor cortex noninvasive brain stimulation on post-stroke aphasia: a narrative review
    Sarvenaz Rahimibarghani
    Valerie Brooke
    Sahar Ghorbanpour
    Hamid R. Fateh
    The Egyptian Journal of Neurology, Psychiatry and Neurosurgery, 59
  • [40] Critical brain regions related to post-stroke aphasia severity identified by early diffusion imaging are not the same when predicting short- and long-term outcome
    Zavanone, Chiara
    Samson, Yves
    Arbizu, Celine
    Dupont, Sophie
    Dormont, Didier
    Rosso, Charlotte
    BRAIN AND LANGUAGE, 2018, 186 : 1 - 7