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The ENIGMA-PD-WML Pipeline: A Containerized, User-Friendly Approach for Accurate, Standardized Segmentation of White Matter Lesions in Multi-Site MRI Data

Al-Bachari, S.; Angell, S.; Abraham, A.; Khubrani, Y.; Smith, P.; Meechan, K.; Long, R.; Somu, S.; Mapa, R.; Owens-Walton, C.; Haddad, E.; Thomopoulos, S. I.; Sudre, C.; Griffanti, L.; Kim, H.; Park, G.; van der Werf, Y. D.; Thompson, P. M.; Jahanshad, N.; Vriend, C.; Schrag, A.; Haroon, H. A.

2026-06-16 neuroscience
10.64898/2026.06.11.731538 bioRxiv
Show abstract

Understanding vascular contributions to disease is a major unmet need. White matter lesions (WML) are an accepted imaging marker of cerebral small vessel disease, giving insights into its related pathologies. A unified approach for WML analyses in large multi-site data is lacking despite the need for pooling of data to overcome the limitations of often small heterogenous MRI studies which make subtyping and identifying patterns within disease groups difficult. Our ENIGMA-PD-WML pipeline is an open-source containerized pipeline containing all the code and packages required for pre-processing, processing and post-processing of T1-weighted and FLAIR data, outputting accurate and reproducible binary WML maps using a UNet approach. The pipeline provides a standardized image analysis approach for WML and outputs data in both native and MNI space to allow for sharing and pooling of data from multiple sites for large-data analysis. In addition to a reliable standardized approach for WML segmentation, key priorities when developing the pipeline included: usability, i.e., requiring minimal manual input and technical expertise to use, and suitability to run on various MRI scanners and acquisition parameters as is common in multi-site data. This paper describes the pipeline in detail, with rationale for each step, providing transparency and facilitating its usage to overcome reproducibility issues in large-scale WML analyses.

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