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Amyloid-beta statuses prediction with free water MR imaging features in Alzheimer’s disease using machine learning models

Rongshen Zhou et al · BMC · 2026

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Abstract Purpose This study aimed to identify the effectiveness of free water MRI (FW-MRI) features for predicting amyloid-beta (Aβ) statuses in Alzheimer’s disease (AD) by constructing diagnostic models using machine learning analysis. Methods This study retrospectively included 96 patients of mild cognitive impairment (MCI) and AD (69 Aβ-positive and 27 Aβ-negative). Clinical characteristics, FW-corrected and standard diffusion indices, and structural MRI indices were collected. Three supervised machine learning algorithms, including random forest (RF), support vector machine (SVM), and extreme gradient boosting (XGB), were adopted to construct a diagnostic model for distinguishing Aβ deposition in AD. SHapley Additive exPlanation (SHAP) value was used as an interpretable algorithm to identify influential characteristics based on the best-performing model. Results In the single-modality model, FW-DTI achieved better classification performance than conventional DTI, which obtained accuracies all above 80% among three machine learning approaches on the internal dataset (RF = 0.800, SVM = 0.867, XGB = 0.800). In the multi-modality model, the XGB model integrated FW-DTI, voxel-based morphometry, and clinical features outperformed the RF and SVM models, achieving an accuracy of 86.7% and an area under the curves (AUC) value 93.2% in the training cohort, and an accuracy of 77.8% and AUC value of 83.1% in the external testing cohort. The model demonstrated high sensitivity but relatively low specificity, indicating a tendency toward positive predictions. Furthermore, FW-DTI indices were shown to have the highest predictive value for Aβ deposition. Conclusion Integrating FW-DTI with structural and clinical features effectively differentiated Aβ positivity in AD, with FW-DTI indices contributing the highest predictive risks, demonstrating the potential of FW-DTI in AD diagnosis.

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APA 7

al, R. Z. E. (2026). Amyloid-beta statuses prediction with free water MR imaging features in Alzheimer’s disease using machine learning models. https://doi.org/10.1186/s12880-026-02380-6

MLA

al, Rongshen Zhou et. "Amyloid-beta statuses prediction with free water MR imaging features in Alzheimer’s disease using machine learning models." 2026. https://doi.org/10.1186/s12880-026-02380-6.

Chicago

al, Rongshen Zhou et. 2026. "Amyloid-beta statuses prediction with free water MR imaging features in Alzheimer’s disease using machine learning models.". https://doi.org/10.1186/s12880-026-02380-6.

Harvard

al, R. Z. E. 2026, Amyloid-beta statuses prediction with free water MR imaging features in Alzheimer’s disease using machine learning models, BMC, available at: https://doi.org/10.1186/s12880-026-02380-6 [Accessed 22 Jun. 2026].

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Título
Amyloid-beta statuses prediction with free water MR imaging features in Alzheimer’s disease using machine learning models
Autor / colaboradores
Rongshen Zhou et al
Editorial
BMC
Año de publicación
2026
ISSN
1471-2342
ISSN
1471-2342
Idioma
eng

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