6533b85cfe1ef96bd12bd663
RESEARCH PRODUCT
Machine learning techniques demonstrating individual movement patterns of the vertebral column: the fingerprint of spinal motion
Gabriele BleserBertram TaetzMichael FröhlichJürgen KonradiFriederike WerthmannPhilipp DreesClaudia WolfJanine HuthwelkerUlrich BetzCarlo Dindorfsubject
Computer scienceMovementBiomedical EngineeringBioengineeringMotion (physics)Machine LearningMotionTriplet lossmedicineHumansDescriptive statisticsMovement (music)business.industryWork (physics)Fingerprint (computing)Pattern recognitionGeneral MedicineSpineComputer Science ApplicationsHuman-Computer InteractionIdentification (information)medicine.anatomical_structureNeural Networks ComputerArtificial intelligencebusinessVertebral columndescription
Surface topography systems enable the capture of spinal dynamic movement; however, it is unclear whether vertebral dynamics are unique enough to identify individuals. Therefore, in this study, we investigated whether the identification of individuals is possible based on dynamic spinal data. Three different data representations were compared (automated extracted features using contrastive loss and triplet loss functions, as well as simple descriptive statistics). High accuracies indicated the possible existence of a personal spinal 'fingerprint', therefore enabling subject recognition. The present work forms the basis for an objective comparison of subjects and the transfer of the method to clinical use cases.
year | journal | country | edition | language |
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2022-01-01 |