Personalizing adult spinal deformity surgery through multimodal artificial intelligence

To achieve meaningful, patient-centered outcomes following adult spinal deformity (ASD) surgery, it is crucial to engage in precise preoperative planning, perform excellent intraoperative execution, and ensure careful postoperative management. The field of multimodal artificial intelligence (AI) is...

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Main Authors: Tej D. Azad, Vikas N. Vattipally, Christopher P. Ames
Format: Article
Language:English
Published: AVES 2024-03-01
Series:Acta Orthopaedica et Traumatologica Turcica
Online Access:https://www.aott.org.tr/en/personalizing-adult-spinal-deformity-surgery-through-multimodal-artificial-intelligence-137390
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author Tej D. Azad
Vikas N. Vattipally
Christopher P. Ames
author_facet Tej D. Azad
Vikas N. Vattipally
Christopher P. Ames
author_sort Tej D. Azad
collection DOAJ
description To achieve meaningful, patient-centered outcomes following adult spinal deformity (ASD) surgery, it is crucial to engage in precise preoperative planning, perform excellent intraoperative execution, and ensure careful postoperative management. The field of multimodal artificial intelligence (AI) is rapidly developing and should be integrated into the management of ASD patients. In this context, we outline the current concepts and explore future applications of AI across the ASD care continuum.
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institution Kabale University
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publishDate 2024-03-01
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series Acta Orthopaedica et Traumatologica Turcica
spelling doaj-art-ca3fb4c6ed0047ee8f4a96be934b8d0c2024-11-20T11:44:12ZengAVESActa Orthopaedica et Traumatologica Turcica1017-995X2024-03-01582808210.5152/j.aott.2024.23215Personalizing adult spinal deformity surgery through multimodal artificial intelligenceTej D. Azad0Vikas N. Vattipally1Christopher P. Ames2Department of Neurosurgery, Johns Hopkins Hospital, Baltimore, USADepartment of Neurosurgery, Johns Hopkins Hospital, Baltimore, USADepartment of Neurological Surgery, University of California, San Francisco, USATo achieve meaningful, patient-centered outcomes following adult spinal deformity (ASD) surgery, it is crucial to engage in precise preoperative planning, perform excellent intraoperative execution, and ensure careful postoperative management. The field of multimodal artificial intelligence (AI) is rapidly developing and should be integrated into the management of ASD patients. In this context, we outline the current concepts and explore future applications of AI across the ASD care continuum.https://www.aott.org.tr/en/personalizing-adult-spinal-deformity-surgery-through-multimodal-artificial-intelligence-137390
spellingShingle Tej D. Azad
Vikas N. Vattipally
Christopher P. Ames
Personalizing adult spinal deformity surgery through multimodal artificial intelligence
Acta Orthopaedica et Traumatologica Turcica
title Personalizing adult spinal deformity surgery through multimodal artificial intelligence
title_full Personalizing adult spinal deformity surgery through multimodal artificial intelligence
title_fullStr Personalizing adult spinal deformity surgery through multimodal artificial intelligence
title_full_unstemmed Personalizing adult spinal deformity surgery through multimodal artificial intelligence
title_short Personalizing adult spinal deformity surgery through multimodal artificial intelligence
title_sort personalizing adult spinal deformity surgery through multimodal artificial intelligence
url https://www.aott.org.tr/en/personalizing-adult-spinal-deformity-surgery-through-multimodal-artificial-intelligence-137390
work_keys_str_mv AT tejdazad personalizingadultspinaldeformitysurgerythroughmultimodalartificialintelligence
AT vikasnvattipally personalizingadultspinaldeformitysurgerythroughmultimodalartificialintelligence
AT christopherpames personalizingadultspinaldeformitysurgerythroughmultimodalartificialintelligence