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Finding the limits of deep learning clinical sensitivity with fractional anisotropy (FA) microstructure maps.
Gaviraghi, Marta; Ricciardi, Antonio; Palesi, Fulvia; Brownlee, Wallace; Vitali, Paolo; Prados, Ferran; Kanber, Baris; Gandini Wheeler-Kingshott, Claudia A M.
Afiliación
  • Gaviraghi M; Department of Brain and Behavioral Sciences, University of Pavia, Pavia, Italy.
  • Ricciardi A; NMR Research Unit, Department of Neuroinflammation, Queen Square Multiple Sclerosis Centre, UCL Queen Square Institute of Neurology, University College London, London, United Kingdom.
  • Palesi F; Department of Brain and Behavioral Sciences, University of Pavia, Pavia, Italy.
  • Brownlee W; NMR Research Unit, Department of Neuroinflammation, Queen Square Multiple Sclerosis Centre, UCL Queen Square Institute of Neurology, University College London, London, United Kingdom.
  • Vitali P; Department of Radiology, IRCCS Policlinico San Donato, Milan, Italy.
  • Prados F; Department of Biomedical Sciences for Health, Universitá degli Studi di Milano, Milan, Italy.
  • Kanber B; NMR Research Unit, Department of Neuroinflammation, Queen Square Multiple Sclerosis Centre, UCL Queen Square Institute of Neurology, University College London, London, United Kingdom.
  • Gandini Wheeler-Kingshott CAM; Department of Medical Physics and Biomedical Engineering, Centre for Medical Image Computing, University College London, London, United Kingdom.
Front Neuroinform ; 18: 1415085, 2024.
Article en En | MEDLINE | ID: mdl-38933144
ABSTRACT

Background:

Quantitative maps obtained with diffusion weighted (DW) imaging, such as fractional anisotropy (FA) -calculated by fitting the diffusion tensor (DT) model to the data,-are very useful to study neurological diseases. To fit this map accurately, acquisition times of the order of several minutes are needed because many noncollinear DW volumes must be acquired to reduce directional biases. Deep learning (DL) can be used to reduce acquisition times by reducing the number of DW volumes. We already developed a DL network named "one-minute FA," which uses 10 DW volumes to obtain FA maps, maintaining the same characteristics and clinical sensitivity of the FA maps calculated with the standard method using more volumes. Recent publications have indicated that it is possible to train DL networks and obtain FA maps even with 4 DW input volumes, far less than the minimum number of directions for the mathematical estimation of the DT.

Methods:

Here we investigated the impact of reducing the number of DW input volumes to 4 or 7, and evaluated the performance and clinical sensitivity of the corresponding DL networks trained to calculate FA, while comparing results also with those using our one-minute FA. Each network training was performed on the human connectome project open-access dataset that has a high resolution and many DW volumes, used to fit a ground truth FA. To evaluate the generalizability of each network, they were tested on two external clinical datasets, not seen during training, and acquired on different scanners with different protocols, as previously done.

Results:

Using 4 or 7 DW volumes, it was possible to train DL networks to obtain FA maps with the same range of values as ground truth - map, only when using HCP test data; pathological sensitivity was lost when tested using the external clinical datasets indeed in both cases, no consistent differences were found between patient groups. On the contrary, our "one-minute FA" did not suffer from the same problem.

Conclusion:

When developing DL networks for reduced acquisition times, the ability to generalize and to generate quantitative biomarkers that provide clinical sensitivity must be addressed.
Palabras clave

Texto completo: 1 Bases de datos: MEDLINE Idioma: En Revista: Front Neuroinform Año: 2024 Tipo del documento: Article País de afiliación: Italia

Texto completo: 1 Bases de datos: MEDLINE Idioma: En Revista: Front Neuroinform Año: 2024 Tipo del documento: Article País de afiliación: Italia