TY - JOUR
T1 - Translational network neuroscience : Nine roadblocks and possible solutions
AU - Fekonja, Lucius S.
AU - Forkel, Stephanie J.
AU - Aydogan, Dogu Baran
AU - Lioumis, Pantelis
AU - Cacciola, Alberto
AU - Lucas, Carolin Weiss
AU - Tournier, Jacques-Donald
AU - Vergani, Francesco
AU - Ritter, Petra
AU - Schenk, Robert
AU - Shams, Boshra
AU - Engelhardt, Melina Julia
AU - Picht, Thomas
PY - 2025/3/20
Y1 - 2025/3/20
N2 - Translational network neuroscience aims to integrate advanced neuroimaging and data analysis techniques into clinical practice to better understand and treat neurological disorders. Despite the promise of technologies such as functional MRI and diffusion MRI combined with network analysis tools, the field faces several challenges that hinder its swift clinical translation. We have identified nine key roadblocks that impede this process: (a) theoretical and basic science foundations; (b) network construction, data interpretation, and validation; (c) MRI access, data variability, and protocol standardization; (d) data sharing; (e) computational resources and expertise; (f) interdisciplinary collaboration; (g) industry collaboration and commercialization; (h) operational efficiency, integration, and training; and (i) ethical and legal considerations. To address these challenges, we propose several possible solution strategies. By aligning scientific goals with clinical realities and establishing a sound ethical framework, translational network neuroscience can achieve meaningful advances in personalized medicine and ultimately improve patient care. We advocate for an interdisciplinary commitment to overcoming translational hurdles in network neuroscience and integrating advanced technologies into routine clinical practice.
AB - Translational network neuroscience aims to integrate advanced neuroimaging and data analysis techniques into clinical practice to better understand and treat neurological disorders. Despite the promise of technologies such as functional MRI and diffusion MRI combined with network analysis tools, the field faces several challenges that hinder its swift clinical translation. We have identified nine key roadblocks that impede this process: (a) theoretical and basic science foundations; (b) network construction, data interpretation, and validation; (c) MRI access, data variability, and protocol standardization; (d) data sharing; (e) computational resources and expertise; (f) interdisciplinary collaboration; (g) industry collaboration and commercialization; (h) operational efficiency, integration, and training; and (i) ethical and legal considerations. To address these challenges, we propose several possible solution strategies. By aligning scientific goals with clinical realities and establishing a sound ethical framework, translational network neuroscience can achieve meaningful advances in personalized medicine and ultimately improve patient care. We advocate for an interdisciplinary commitment to overcoming translational hurdles in network neuroscience and integrating advanced technologies into routine clinical practice.
KW - Connectomics
KW - Network neuroscience
KW - Patients
KW - Personalized medicine
KW - Translational medicine
UR - https://www.webofscience.com/api/gateway?GWVersion=2&SrcApp=aalto_pure&SrcAuth=WosAPI&KeyUT=WOS:001455709300004&DestLinkType=FullRecord&DestApp=WOS_CPL
U2 - 10.1162/netn_a_00435
DO - 10.1162/netn_a_00435
M3 - Editorial
C2 - 40161983
SN - 2472-1751
VL - 9
SP - 352
EP - 370
JO - Network Neuroscience
JF - Network Neuroscience
IS - 1
ER -