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1.
Neuromodulation ; 27(3): 572-583, 2024 Apr.
Article in English | MEDLINE | ID: mdl-37212759

ABSTRACT

OBJECTIVE: The primary motor cortex (M1) is a usual target for therapeutic application of repetitive transcranial magnetic stimulation (rTMS), especially the region of hand motor representation. However, other M1 regions can be considered as potential rTMS targets, such as the region of lower limb or face representation. In this study, we assessed the localization of all these regions on magnetic resonance imaging (MRI) with the aim of defining three standardized M1 targets for the practice of neuronavigated rTMS. MATERIALS AND METHODS: A pointing task of these targets was performed by three rTMS experts on 44 healthy brain MRI data to assess interrater reliability (including the calculation of intraclass correlation coefficients [ICCs] and coefficients of variation [CoVs] and the construction of Bland-Altman plots). In addition, two "standard" brain MRI data were randomly interspersed with the other MRI data to assess intrarater reliability. A barycenter was calculated for each target (with x-y-z coordinates provided in normalized brain coordinate systems), in addition to the geodesic distance between the scalp projection of the barycenters of these different targets. RESULTS: Intrarater and interrater agreement was good, according to ICCs, CoVs, or Bland-Altman plots, although interrater variability was greater for anteroposterior (y) and craniocaudal (z) coordinates, especially for the face target. The scalp projection of the barycenters between the different cortical targets ranged from 32.4 to 35.5 mm for either the lower-limb-to-upper-limb target distance or the upper-limb-to-face target distance. CONCLUSIONS: This work clearly delineates three different targets for the application of motor cortex rTMS that correspond to lower limb, upper limb, and face motor representations. These three targets are sufficiently spaced to consider that their stimulation can act on distinct neural networks.


Subject(s)
Motor Cortex , Humans , Motor Cortex/diagnostic imaging , Transcranial Magnetic Stimulation/methods , Reproducibility of Results , Hand , Lower Extremity/diagnostic imaging
2.
Int J Comput Assist Radiol Surg ; 18(7): 1269-1277, 2023 Jul.
Article in English | MEDLINE | ID: mdl-37249748

ABSTRACT

PURPOSE: Many neurosurgical planning tasks rely on identifying points of interest in volumetric images. Often, these points require significant expertise to identify correctly as, in some cases, they are not visible but instead inferred by the clinician. This leads to a high degree of variability between annotators selecting these points. In particular, errors of type are when the experts fundamentally select different points rather than the same point with some inaccuracy. This complicates research as their mean may not reflect any of the experts' intentions nor the ground truth. METHODS: We present a regularised Bayesian model for measuring errors of type in pointing tasks. This model is reference-free; in that it does not require a priori knowledge of the ground truth point but instead works on the basis of the level of consensus between multiple annotators. We apply this model to simulated data and clinical data from transcranial magnetic stimulation for chronic pain. RESULTS: Our model estimates the probabilities of selecting the correct point in the range of 82.6[Formula: see text]88.6% with uncertainties in the range of 2.8[Formula: see text]4.0%. This agrees with the literature where ground truth points are known. The uncertainty has not previously been explored in the literature and gives an indication of the dataset's strength. CONCLUSIONS: Our reference-free Bayesian framework easily models errors of type in pointing tasks. It allows for clinical studies to be performed with a limited number of annotators where the ground truth is not immediately known, which can be applied widely for better understanding human errors in neurosurgical planning.


Subject(s)
Bayes Theorem , Humans , Probability , Uncertainty
3.
Int J Comput Assist Radiol Surg ; 16(7): 1077-1087, 2021 Jul.
Article in English | MEDLINE | ID: mdl-34089439

ABSTRACT

PURPOSE: Transcranial magnetic stimulation (TMS) is a growing therapy for a variety of psychiatric and neurological disorders that arise from or are modulated by cortical regions of the brain represented by singular 3D target points. These target points are often determined manually with assistance from a pre-operative T1-weighted MRI, although there is growing interest in automatic target point localisation using an atlas. However, both approaches can be time-consuming which has an effect on the clinical workflow, and the latter does not take into account patient variability such as the varying number of cortical gyri where these targets are located. METHODS: This paper proposes a multi-resolution convolutional neural network for point localisation in MR images for a priori defined points in increasingly finely resolved versions of the input image. This approach is both fast and highly memory efficient, allowing it to run in high-throughput centres, and has the capability of distinguishing between patients with high levels of anatomical variability. RESULTS: Preliminary experiments have found the accuracy of this network to be [Formula: see text] mm, compared to [Formula: see text] mm for deformable registration and [Formula: see text] mm for a human expert. For most treatment points, the human expert and proposed CNN statistically significantly outperform registration, but neither statistically significantly outperforms the other, suggesting that the proposed network has human-level performance. CONCLUSIONS: The human-level performance of this network indicates that it can improve TMS planning by automatically localising target points in seconds, avoiding more time-consuming registration or manual point localisation processes. This is particularly beneficial for out-of-hospital centres with limited computational resources where TMS is increasingly being administered.


Subject(s)
Brain/diagnostic imaging , Image Processing, Computer-Assisted/methods , Magnetic Resonance Imaging/methods , Nervous System Diseases/therapy , Neural Networks, Computer , Transcranial Magnetic Stimulation/methods , Humans , Nervous System Diseases/diagnosis , Reproducibility of Results
4.
Stud Health Technol Inform ; 95: 230-5, 2003.
Article in English | MEDLINE | ID: mdl-14663992

ABSTRACT

The process of transmitting patient medical information between different healthcare parties involves harmonizing multiple elements: addresses, certificates, patient IDs, communication protocol, message format, and documents/EPR to be exchanged. Beyond the work done at the "information structure level" within CEN TC251, ISO TC215, HL7 and DICOM, it is necessary to focus on the "basic medical communication level." An original approach, based on the "Patient Envelope", has been developed and successfully implemented for Oncology. The operator of the National "Réseau Santé Social" is now proposing a new "secure messaging" service supporting the "Envelope"-based communication. The authors are actively involved in standardization organizations' works, including EDI Santé, DICOM, IETF, and ISO TC 215. The current "envelope" format is compatible with all the e-mail clients. It will evolve to be based on the ebXML envelope, extended with a "medical header" containing HL7/EHRCOM Data Types and C-METS/GPICs. This document describes the results from a 3-year experience, as well as the different steps included in the project.


Subject(s)
Computer Security , Internet/standards , Medical Records Systems, Computerized/standards , Diffusion of Innovation , Europe , Humans
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