Network


Latest external collaboration on country level. Dive into details by clicking on the dots.

Hotspot


Dive into the research topics where Hans Martin Kjer is active.

Publication


Featured researches published by Hans Martin Kjer.


Physics in Medicine and Biology | 2014

A voxel-based investigation for MRI-only radiotherapy of the brain using ultra short echo times.

Jens Morgenthaler Edmund; Hans Martin Kjer; Koen Van Leemput; Rasmus Hvass Hansen; Jon Al Andersen; Daniel Andreasen

Radiotherapy (RT) based on magnetic resonance imaging (MRI) as the only modality, so-called MRI-only RT, would remove the systematic registration error between MR and computed tomography (CT), and provide co-registered MRI for assessment of treatment response and adaptive RT. Electron densities, however, need to be assigned to the MRI images for dose calculation and patient setup based on digitally reconstructed radiographs (DRRs). Here, we investigate the geometric and dosimetric performance for a number of popular voxel-based methods to generate a so-called pseudo CT (pCT). Five patients receiving cranial irradiation, each containing a co-registered MRI and CT scan, were included. An ultra short echo time MRI sequence for bone visualization was used. Six methods were investigated for three popular types of voxel-based approaches; (1) threshold-based segmentation, (2) Bayesian segmentation and (3) statistical regression. Each approach contained two methods. Approach 1 used bulk density assignment of MRI voxels into air, soft tissue and bone based on logical masks and the transverse relaxation time T2 of the bone. Approach 2 used similar bulk density assignments with Bayesian statistics including or excluding additional spatial information. Approach 3 used a statistical regression correlating MRI voxels with their corresponding CT voxels. A similar photon and proton treatment plan was generated for a target positioned between the nasal cavity and the brainstem for all patients. The CT agreement with the pCT of each method was quantified and compared with the other methods geometrically and dosimetrically using both a number of reported metrics and introducing some novel metrics. The best geometrical agreement with CT was obtained with the statistical regression methods which performed significantly better than the threshold and Bayesian segmentation methods (excluding spatial information). All methods agreed significantly better with CT than a reference water MRI comparison. The mean dosimetric deviation for photons and protons compared to the CT was about 2% and highest in the gradient dose region of the brainstem. Both the threshold based method and the statistical regression methods showed the highest dosimetrical agreement.Generation of pCTs using statistical regression seems to be the most promising candidate for MRI-only RT of the brain. Further, the total amount of different tissues needs to be taken into account for dosimetric considerations regardless of their correct geometrical position.


medical image computing and computer assisted intervention | 2014

Patient-Specific Simulation of Implant Placement and Function for Cochlear Implantation Surgery Planning

Mario Ceresa; Nerea Mangado Lopez; Hector Dejea Velardo; Noemí Carranza Herrezuelo; Pavel Mistrik; Hans Martin Kjer; Sergio Vera; Rasmus Reinhold Paulsen; Miguel Ángel González Ballester

We present a framework for patient specific electrical stimulation of the cochlea, that allows to perform in-silico analysis of implant placement and function before surgery. A Statistical Shape Model (SSM) is created from high-resolution human μCT data to capture important anatomical details. A Finite Element Model (FEM) is built and adapted to the patient using the results of the SSM. Electrical simulations based on Maxwells equations for the electromagnetic field are performed on this personalized model. The model includes implanted electrodes and nerve fibers. We present the results for the bipolar stimulation protocol and predict the voltage spread and the locations of nerve excitation.


Annals of Biomedical Engineering | 2016

Automatic Model Generation Framework for Computational Simulation of Cochlear Implantation

Nerea Mangado; Mario Ceresa; Nicolas Duchateau; Hans Martin Kjer; Sergio Vera; Hector Dejea Velardo; Pavel Mistrik; Rasmus Reinhold Paulsen; Jens Fagertun; Jérôme Noailly; Gemma Piella; Miguel Ángel González Ballester

Recent developments in computational modeling of cochlear implantation are promising to study in silico the performance of the implant before surgery. However, creating a complete computational model of the patient’s anatomy while including an external device geometry remains challenging. To address such a challenge, we propose an automatic framework for the generation of patient-specific meshes for finite element modeling of the implanted cochlea. First, a statistical shape model is constructed from high-resolution anatomical μCT images. Then, by fitting the statistical model to a patient’s CT image, an accurate model of the patient-specific cochlea anatomy is obtained. An algorithm based on the parallel transport frame is employed to perform the virtual insertion of the cochlear implant. Our automatic framework also incorporates the surrounding bone and nerve fibers and assigns constitutive parameters to all components of the finite element model. This model can then be used to study in silico the effects of the electrical stimulation of the cochlear implant. Results are shown on a total of 25 models of patients. In all cases, a final mesh suitable for finite element simulations was obtained, in an average time of 94 s. The framework has proven to be fast and robust, and is promising for a detailed prognosis of the cochlear implantation surgery.


Scientific Data | 2017

A multiscale imaging and modelling dataset of the human inner ear

Nicolas Gerber; Mauricio Reyes; Livia Barazzetti; Hans Martin Kjer; Sergio Vera; Martin Stauber; Pavel Mistrik; Mario Ceresa; Nerea Mangado; Wilhelm Wimmer; Thomas Stark; Rasmus Reinhold Paulsen; Stefan Weber; Marco Caversaccio; Miguel Ángel González Ballester

Understanding the human inner ear anatomy and its internal structures is paramount to advance hearing implant technology. While the emergence of imaging devices allowed researchers to improve understanding of intracochlear structures, the difficulties to collect appropriate data has resulted in studies conducted with few samples. To assist the cochlear research community, a large collection of human temporal bone images is being made available. This data descriptor, therefore, describes a rich set of image volumes acquired using cone beam computed tomography and micro-CT modalities, accompanied by manual delineations of the cochlea and sub-compartments, a statistical shape model encoding its anatomical variability, and data for electrode insertion and electrical simulations. This data makes an important asset for future studies in need of high-resolution data and related statistical data objects of the cochlea used to leverage scientific hypotheses. It is of relevance to anatomists, audiologists, computer scientists in the different domains of image analysis, computer simulations, imaging formation, and for biomedical engineers designing new strategies for cochlear implantations, electrode design, and others.


Workshop on Clinical Image-Based Procedures | 2014

Patient Specific Simulation for Planning of Cochlear Implantation Surgery

Sergio Vera; Frederic Pérez; Clara Balust; Ramon Trueba; Jordi Rubió; Raul Calvo; Xavier Mazaira; Anandhan Danasingh; Livia Barazzetti; Mauricio Reyes; Mario Ceresa; Jens Fagertum; Hans Martin Kjer; Rasmus Reinhold Paulsen; Miguel Ángel González Ballester

Cochlear implantation is a surgical procedure that can restore the hearing capabilities to patients with severe or complete functional loss. However, the level of restoration varies highly between subjects and depends on patient-specific factors. This paper presents a software application for planning cochlear implantation procedures that includes patient-specific anatomy estimation using high resolution models, implant optimization for patient-specific implant selection, simulation of mechanical and electrical properties of the implant as well as clinical reporting.


computer assisted radiology and surgery | 2015

Automatic Generation of a Computational Model for Monopolar Stimulation of Cochlear Implants

Nerea Mangado; Mario Ceresa; Nicolas Duchateau; H. Dejea Velardo; Hans Martin Kjer; Rasmus Reinhold Paulsen; Sergio Vera; Pavel Mistrik; J. Herrero; M.Á. González Ballester

Biopsy is commonly used to confirm cancer diagnosis when radiologically indicated. Given the ability of PET to localize malignancies in heterogeneous tumors and tumors that do not have a CT correlate, PET/CT guided biopsy may improve the diagnostic yield of biopsies. To facilitate PET/CT guided needle biopsy, we developed a workflow that allows us to bring PET image guidance into the interventional CT suite. In this abstract, we present SlicerPET, a user-friendly workflow based module developed using open source software libraries to guide needle biopsy in the interventional suite.


computer assisted radiology and surgery | 2016

Random walks with shape prior for cochlea segmentation in ex vivo \mu \hbox {CT}

Esmeralda Ruiz Pujadas; Hans Martin Kjer; Gemma Piella; Mario Ceresa; Miguel Ángel González Ballester

PurposeCochlear implantation is a safe and effective surgical procedure to restore hearing in deaf patients. However, the level of restoration achieved may vary due to differences in anatomy, implant type and surgical access. In order to reduce the variability of the surgical outcomes, we previously proposed the use of a high-resolution model built from


Proceedings of SPIE | 2016

Cochlea segmentation using iterated random walks with shape prior

Esmeralda Ruiz Pujadas; Hans Martin Kjer; Sergio Vera; Mario Ceresa; Miguel Ángel González Ballester


Image and Vision Computing | 2016

Iterated random walks with shape prior

Esmeralda Ruiz Pujadas; Hans Martin Kjer; Gemma Piella; Miguel Ángel González Ballester

\mu \hbox {CT}


scandinavian conference on image analysis | 2015

Image Registration of Cochlear

Hans Martin Kjer; Sergio Vera; Jens Fagertun; Debora Gil; Miguel Ángel González-Ballester; Rasmus Reinhold Paulsen

Collaboration


Dive into the Hans Martin Kjer's collaboration.

Top Co-Authors

Avatar

Rasmus Reinhold Paulsen

Technical University of Denmark

View shared research outputs
Top Co-Authors

Avatar

Sergio Vera

Autonomous University of Barcelona

View shared research outputs
Top Co-Authors

Avatar

Mario Ceresa

Pompeu Fabra University

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar

Gemma Piella

Pompeu Fabra University

View shared research outputs
Top Co-Authors

Avatar

Jens Fagertun

Technical University of Denmark

View shared research outputs
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Top Co-Authors

Avatar
Researchain Logo
Decentralizing Knowledge