Pooling publicly-available MRI data from multiple sites allows to assemble extensive groups of subjects, increase statistical power, and promote data reuse with machine learning techniques. The harmonization of multicenter data is necessary to reduce the confounding effect associated with non-biological sources of variability in the data. However, when applied to the entire dataset before machine learning, the harmonization leads to data leakage, because information outside the training set may affect model building, and potentially falsely overestimate performance. We propose a 1) measurement of the efficacy of data harmonization; 2) harmonizer transformer, i.e., an implementation of the ComBat harmonization allowing its encapsulation among the preprocessing steps of a machine learning pipeline, avoiding data leakage by design. We tested these tools using brain T1-weighted MRI data from 1740 healthy subjects acquired at 36 sites. After harmonization, the site effect was removed or reduced, and we showed the data leakage effect in predicting individual age from MRI data, highlighting that introducing the harmonizer transformer into a machine learning pipeline allows for avoiding data leakage by design.

Marzi C., Giannelli M., Barucci A., Tessa C., Mascalchi M., Diciotti S. (2024). Efficacy of MRI data harmonization in the age of machine learning: a multicenter study across 36 datasets. SCIENTIFIC DATA, 11(115), 1-27 [10.1038/s41597-023-02421-7].

Efficacy of MRI data harmonization in the age of machine learning: a multicenter study across 36 datasets

Diciotti S.
2024

Abstract

Pooling publicly-available MRI data from multiple sites allows to assemble extensive groups of subjects, increase statistical power, and promote data reuse with machine learning techniques. The harmonization of multicenter data is necessary to reduce the confounding effect associated with non-biological sources of variability in the data. However, when applied to the entire dataset before machine learning, the harmonization leads to data leakage, because information outside the training set may affect model building, and potentially falsely overestimate performance. We propose a 1) measurement of the efficacy of data harmonization; 2) harmonizer transformer, i.e., an implementation of the ComBat harmonization allowing its encapsulation among the preprocessing steps of a machine learning pipeline, avoiding data leakage by design. We tested these tools using brain T1-weighted MRI data from 1740 healthy subjects acquired at 36 sites. After harmonization, the site effect was removed or reduced, and we showed the data leakage effect in predicting individual age from MRI data, highlighting that introducing the harmonizer transformer into a machine learning pipeline allows for avoiding data leakage by design.
2024
Marzi C., Giannelli M., Barucci A., Tessa C., Mascalchi M., Diciotti S. (2024). Efficacy of MRI data harmonization in the age of machine learning: a multicenter study across 36 datasets. SCIENTIFIC DATA, 11(115), 1-27 [10.1038/s41597-023-02421-7].
Marzi C.; Giannelli M.; Barucci A.; Tessa C.; Mascalchi M.; Diciotti S.
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11585/970137
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