About CEHEADS
Our research focuses on developing data science approaches for medical and veterinary applications, with emphasis on diagnostics, treatment outcome prediction, biomarker identification and automatic segmentation of radiotherapy target volumes. We analyse medical images and tabular data to develop our models.
Areas of interest are feature engineering, feature selection, multivariate and multi-source data analysis, machine learning, deep learning and related software development.
News and publications
Latest news
New course in healthcare data science DAT350
We have recently established a 10 ECTS course in Applied Healthcare Data Science and Medical Physics (DAT350 Applied Healthcare Data Science and Medical Physics | NMBU). The course covers data science for analysis of medical data such as survival analysis, multi-block methods for multi-source data, deep learning for automatic segmentation of medical images, biomarker engineering and feature selection for high-dimensional data as well as the physics of medical imaging and radiotherapy. The course is given every autumn term and is taught by Oliver Tomic and colleagues from NMBU and OUS.
Sept 2024
CEHEADS participation in PRESIMAL Autumn Research School in Medical AI 2024
Cecilia Futsæther participated in the PRESIMAL Autumn Research School on Artificial Intelligence Methods in Medical Imaging - Building Bridges across Deep Learning Rivers PRESIMAL | MMIV this September, giving a presentation on Deep learning for medical imaging. The research school covers timely topics related to precision imaging and machine learning and is highly recommended, not only for the interesting lectures, but also for the networking possibilities and activities such as a medical data contest, student presentations and posters and quizzes.
Successful use of AI in veterinary medicine
Read the article about how artificial intelligence can open new opportunities in veterinary medicine. CEHEADS has collaborated with Nora Diagranes and colleagues at the Faculty of Veterinary Medicine on the AntiFENT project.
May 2024
Third Healthcare Data Science Workshop at Väderöarna
CEHEADS hosted its Third Healthcare Data Science Workshop at Väderöarna, Sweden on 27-29 May 2024. The workshop gathered colleagues from the Radiation Hospital, Uniklinikum Erlangen, Germany, the Institute of Cancer Research, Oslo University Hospital (R-OUS), the Dept. of Physics, University of Oslo and the Faculty of Veterinary Medicine, NMBU. Discussions ranged from auto-diagnosis of dysplasia in canines, immunotherapy and other topics in radiotherapy as well as data science approaches for handling high-dimensional and multi-source data.
CEHEADS at ESTRO 2022
CEHEADS members Aurora Rosvoll Grøndahl, Bao Ngoc Huynh and Cecilia Futsaether attended ESTRO 2022, the annual congress of the European Society for Radiotherapy and Oncology. The congress was held on 6-10 May, 2022 in Copenhagen, Denmark. PhD student Bao Ngoc Huynh presented her poster Deep learning and radiomics of PET/CT images for head and neck cancer treatment outcome prediction. Professor Cecilia Futsaether presented an invited talk on Deep learning GTV segmentation based on PET/CT in the symposium on Deep Learning for Target Auto-segmentation.
Oct 2021
CEHEADS at BiGART 2021-Acta Oncologica
CEHEADS PhD students Aurora Rosvoll Grøndahl and Bao Ngoc Huynh as well as collaborating PhD student Franziska Knuth at the Department of Physics, NTNU, Trondheim, presented their research on automatic segmentation of head and neck, anal and rectal cancer tumours using deep learning, at the BiGART2021-Acta Oncologica conference held jointly on October 5th and 6th, 2021, in Oslo, Norway and Aarhus, Denmark.
Oct 2021
CEHEADS at Women in Data Science Villach 2021
CEHEADS PhD student Anna Jenul was invited to present her research at the Women in Data Science (WiDS) Villach conference 2021, held on October 1st, 2021. Her talk was on Data science for treatment outcome prediction: towards interpretable models combining healthcare data from multiple sources.
Sept 2021
CEHEADS at MICCAI2021
PhD students Jintao Ren from Aarhus University, Denmark and Bao Ngoc Huynh and Aurora Rosvoll Grøndahl from CEHEADS participated together in the HECKTOR2021 challenge of MICCAI2021 held in September 2021, where the aim was head and neck cancer segmentation and outcome prediction based on PET/CT images. The team achieved a 5th place in the segmentation challenge, where their deep learning model obtained the highest Dice score (overlap with human expert), but a 95th percentile Haussdorff distance 0.06 mm larger than the winning team.
Sept 2020
Read about CEHEADS at forskning.no
Read about CEHEADS' research on artificial intelligence and cancer diagnostics at forskning.no.
Apr 2019
CEHEADS wins best poster award at ESTRO38
CEHEADS won the best poster award in physics for Comparison of automatic tumour segmentation approaches for head and neck cancers in PET-CT images at the ESTRO38 Congress in Milano, Italy, in April 2019. Read more about our work on tumour segmentation in the ESTRO newsletter (p.62)
Publications
2024
- BN Huynh, AR Groendahl, O Tomic, KH Liland, IS Knudtsen, F Hoebers, W van Elmpt, E Dale, E Malinen, CM Futsaether. 2024. Deep learning with uncertainty estimation for automatic tumor segmentation in PET/CT of head and neck cancers: impact of model complexity, image processing and augmentation. Biomed. Phys. Eng. Express 10 (2024) 055038 DOI: 10.1088/2057-1976/ad6dcd
- KH Liland, O Tomic, UG Indahl, CM Futsæther, J Lei, OC Granmo, LG Snippen. 2023. Tsetlin Machine in DNA sequence classification: Application to prokaryote gene prediction / A match made in silico. International Symposium on the Tsetlin Machine (ISTM), IEEE conference proceedings. pp. 1-7, ISBN; 979-8-3503-4477-6. doi: 10.1109/ISTM58889.2023.10454960.
2023
- Huynh BN, Groendahl AR, Tomic O, Liland KH, Knudtsen IS, Hoebers F, van Elmpt W, Malinen E, Dale E and Futsaether CM. 2023. Head and neck cancer treatment outcome prediction: a comparison between machine learning with conventional radiomics features and deep learning radiomics. Frontiers in Medicine. 10:1217037. DOI: 10.3389/fmed.2023.1217037
- AR Groendahl, BN Huynh, O Tomic, E Dale, E Malinen, HK Skogmo, CM Futsaether. 2023. Automatic gross tumor volume segmentation for canine head and neck cancer radiotherapy using deep learning and cross-species transfer learning. Frontiers in Veterinary Science, 10:1143986. DOI: 10.3389/fvets.2023.1143986
- L. Fongaro, C. Futsæther, O. Tomic, I.B. Lande, K. Kvaal, M. Wallenius, K. Mayer. 2023. Development of a new approach for rapid identification and classification of uranium ore concentrate powders using textural and spectroscopy signature. Chemometrics and Intelligent Laboratory Systems 239, 104858. DOI: 10.1016/j.chemolab.2023.104858
2022
- AR. Groendahl, YM. Moe, CK. Kaushal, BN. Huynh, E. Rusten, O. Tomic, E. Hernes, B. Hanekamp, C. Undseth, MG. Guren, E. Malinen, CM. Futsaether. 2022. Deep learning-based automatic delineation of anal cancer gross tumour volume: A multimodality comparison of CT, PET and MRI. Acta Oncologica, 61(1), 89-96. DOI: 10.1080/0284186X.2021.1994645
- Age K. Smilde, Tormod Næs, Kristian Hovde Liland. Multiblock Data Fusion in Statistics and Machine Learning: Applications in the Natural and Life Sciences, Wiley (2022).
- Anna Jenul, Stefan Schrunner, Bao Ngoc Hyunh, Runar Helin, Cecilia Maria Futsæther, Kristian Hovde Liland, Oliver Tomic. Ranking feature block importance in artificial multiblock neural networks. 31st International Conference on Artificial Neural Networks – ICANN 2022. DOI: https://doi.org/10.1007/978-3-031-15937-4
- Anna Jenul, Stefan Schrunner, Jürgen Pilz, Oliver Tomic. A User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS). Machine Learning (2022). DOI: 10.1007/s10994-022-06221-9
- Anna Jenul, Bimal Bhattarai, Kristian Hovde Liland, Lei Jiao, Stefan Schrunner, Cecilia Futsæther, Ole-Christoffer Granmo, Oliver Tomic. Component based Pre-filtering of Noisy Data for Improved Tsetlin Machine Modelling. ISTM2022 – First International Symposium on the Tsetlin Machine. (2022). DOI: 10.1109/ISTM54910.2022.00019
- Franziska Knuth, Aurora R. Groendahl, Rene M. Winter, Turid Torheim, Anne Negård, Stein Harald Holmedal, Kine Mari Bakke, Sebastian Meltzer, Cecilia M. Futsæther, Kathrine R. Redalen. 2022. Semi-automatic tumor segmentation of rectal cancer based on functional magnetic resonance imaging. Physics and Imaging in Radiation Oncology 22:77-84. DOI: 10.1016/j.phro.2022.05.001
2021
- Huynh, BN., Ren, J., Groendahl, A.R., Tomic, O., Korreman, S.S., Futsaether, C.M. (2022). Comparing Deep Learning and Conventional Machine Learning for Outcome Prediction of Head and Neck Cancer in PET/CT. In: Andrearczyk, V., Oreiller, V., Hatt, M., Depeursinge, A. (eds) Head and Neck Tumor Segmentation and Outcome Prediction. HECKTOR 2021. Lecture Notes in Computer Science, vol 13209. Springer, Cham. DOI: 10.1007/978-3-030-98253-9_30
- Ren, J., Huynh, BN., Groendahl, A.R., Tomic, O., Futsaether, C.M., Korreman, S.S. (2022). PET Normalizations to Improve Deep Learning Auto-Segmentation of Head and Neck Tumors in 3D PET/CT. In: Andrearczyk, V., Oreiller, V., Hatt, M., Depeursinge, A. (eds) Head and Neck Tumor Segmentation and Outcome Prediction. HECKTOR 2021. Lecture Notes in Computer Science, vol 13209. Springer, Cham. DOI: 10.1007/978-3-030-98253-9_7
- Knuth, I.A. Adde, B.N. Huynh, A.R. Grøndahl, R.M. Winter, A. Negård, S.H. Holmedal, S. Meltzer, A.H. Ree, K. Flatmark, S. Dueland, K.H. Hole, T. Seierstad, K.R: Redalen, C.M. Futsæther, MRI-based automatic segmentation of rectal cancer using 2D U-Net on two independent cohorts. Acta Oncologica (2021), 61:2, 255-263. DOI: 10.1080/0284186X.2021.2013530
- Jenul, S. Schrunner, K.H. Liland, U.G. Indahl, C.M. Futsaether, O. Tomic. RENT - Repeated Elastic Net Technique for Feature. IEEE Access. DOI: 10.1109/ACCESS.2021.3126429
- A.Jenul, S. Schrunner, B.N. Huynh, O. Tomic, RENT: A Python Package for Repeated Elastic Net Feature Selection. Journal of Open Source Software, 6(63), 3323 (2021), https://joss.theoj.org/papers/10.21105/joss.03323
- A.R. Groendahl, Y.M. Moe, C.K. Kaushal, B.N. Huynh, E. Rusten, O. Tomic, E. Hernes, B. Hanekamp, C.Undseth, M.G. Guren, E. Malinen, C.M. Futsaether: Deep learning-based automatic delineation of anal cancer gross tumour volume: A multimodality comparison of CT, PET and MRI. DOI: 10.1080/0284186X.2021.1994645
- A.R. Groendahl, I.S. Knudtsen, B.N. Huynh, M. Mulstad, Y.M. Moe, F. Knuth, O. Tomic, U.G. Indahl, T. Torheim, E. Dale, E. Malinen, C.M. Futsaether. A comparison of methods for fully automatic segmentation of tumors and involved nodes in PET/CT of head and neck cancers. Phys. Med. Biol. 66 (2021) 065012. https://pubmed.ncbi.nlm.nih.gov/33666176/
- Yngve Mardal Moe, Aurora Rosvoll Groendahl, Oliver Tomic, Einar Dale, Eirik Malinen, Cecilia Marie Futsaether, Deep learning-based auto-delineation of gross tumour volumes and involved nodes in PET/CT images of head and neck cancer patients. European Journal of Nuclear Medicine and Molecular Imaging, 48:2782–2792 (2021). DOI: 10.1007/s00259-020-05125-x.
2019
- Tomic, T. Graff, K.H. Liland, T. Næs, hoggorm: a phyton library for explorative multivariate statistics. The Journal of Open Source Software. 4(39), 980 (2019), https://joss.theoj.org/papers/10.21105/joss.0098
- Helgeland, O. Tomic, T.M. Hansen, D.T. Kristoffersen, S. Hassani, A.K. Lindahl, Postoperative wound dehiscence after laparatomy: A useful health quality indicator? A cohort study based on Norwegian hospital administrative data. BMJ Open, Apr 2019, 9 (4) e026422 [more] https://bmjopen.bmj.com/content/9/4/e026422
- Groendahl, A.R., Midtfjord, A.D., Langberg, G.S.E.R.; Tomic, O., Indahl, U.G., Knudtsen, I.S., Malinen, E., Dale, E., Futsaether, C.M. Prediction of treatment outcome for head and neck cancers using radiomics of PET/CT images. Radiotherapy and Oncology 133: S526-S526 (2019) [more] https://www.thegreenjournal.com/article/S0167-8140(19)31387-8/fulltext#relatedArticles
- Groendahl, A.R., Mulstad, M., Moe, Y.M., Knudtsen, I.S., Torheim, T., Tomic, O., Indahl, U.G., Malinen, E., Dale, E., Futsaether, C.M. Comparison of automatic tumour segmentation approaches for head and neck cancers in PET/CT images. Radiotherapy and Oncology 133: S557-S557. (2019) [more] https://www.thegreenjournal.com/article/S0167-8140(19)31429-X/fulltext#relatedArticles
- Knuth, F., Grondahl, A.R., Torheim, T., Negard, A., Holmedal, S.H., Bakke, K.M., Meltzer, S., Futsaether, C.M., Redalen, K.R. Automatic tumor delineation in rectal cancer using functional MRI and machine learning. Radiotherapy and Oncology 133: S269-S270 (2019) [more] https://www.thegreenjournal.com/article/S0167-8140(19)30937-5/fulltext
2017
- Turid Torheim, Eirik Malinen, Knut H. Hole, Kjersti Vassmo Lund, Ulf G. Indahl, Heidi Lyng, Knut Kvaal, Cecilia Futsaether. Autodelineation of cervical cancers using multiparametric MRI and machine learning. Acta Oncologica (2017) 56:806-812 https://www.tandfonline.com/doi/full/10.1080/0284186X.2017.1285499
- A Kristian, J Holtedahl, T Torheim, C Futsaether, E Hernes, O Engebråten, G Mælandsmo, E Malinen. Dynamic 2-deoxy-2-[18F]fluoro-D-glucose positron emission tomography for chemotherapy response monitoring of breast cancer xenografts. Molecular Imaging and Biology 19:271 (2017) https://link.springer.com/article/10.1007/s11307-016-0998-x
- Eirik O. Jåstad, Turid Torheim, Kathleen M. Villeneuve, Knut Kvaal, Eli O. Hole, Einar Sagstuen, Eirik Malinen, Cecilia Futsaether. In Quest of the Alanine R3 Radical: Multivariate EPR Spectral Analyses of X-Irradiated Alanine in the Solid State. The Journal of Physical Chemistry A, 121:7139-7147. (2017) https://doi.org/10.1021/acs.jpca.7b06447
2016
- Turid Torheim, Aurora Groendahl, Erlend Andersen, Heidi Lyng, Eirik Malinen, Knut Kvaal, Cecilia Futsaether. Cluster analysis of dynamics contrast enhanced MRI reveals tumour subregions related to locoreginal relapse for cervical cancer patients. Acta Oncologica 55:1294-1298. (2016) [more] https://www.tandfonline.com/doi/full/10.1080/0284186X.2016.1189091
2014
- Turid Torheim, Eirik Malinen, Knut Kvaal, Heidi Lyng, Ulf G. Indahl, Erlend K. F. Andersen, Cecilia M. Futsaether. Classification of dynamic contrast enhanced MR images of cervical cancer using texture analysis and support vector machines. IEEE Transactions on Medical Imaging 33: 1648-1656. (2014) [more] https://ieeexplore.ieee.org/document/6807722
Doctoral theses
- Aurora Rosvoll Grøndahl. Assessment of machine learning methods for automatic tumor segmentation. Philosophiae Doctor (PhD) Thesis 2023:12, NMBU. ISBN: 978-82-575-2041-0. https://hdl.handle.net/11250/3057388
- Anna Selina Jenul. Data- and Expert-driven Feature Selection for Predictive Models in Healthcare – Towards Increased Interpretability in Underdetermined Machine Learning Problems. Philosophiae Doctor (PhD) Thesis 2023:34, NMBU. ISBN: 978-82-575-2062-5. https://hdl.handle.net/11250/3068626
- Turid Katrine Gjerstad Torheim. Multivariate Analysis of Medical Images in Cancer Treatment Planning and Evaluation. Philosophiae Doctor (PhD) Thesis 2016:21. ISBN 978-82-575-1350-4
Master's theses
2024
- Min Jeong Cheon. Comparison of Survival Analysis Models for Treatment Outcome Prediction in Head and Neck Cancer. MSc thesis, NMBU.
- Helene Glemming. Maskinlæring for prediksjon av behandlingsutfall hos pasienter med hode- og halskreft (Machine Learning for Predicting Treatment Outcome for Patients with Head and Neck Cancer). MSc thesis, NMBU.
- Artush Mkrtchyan. Diagnostics of Canine Elbow Dysplasia using Deep Learning with Explainability Analysis. MSc thesis, NMBU.
- Torjus Strandenes Moen. Survival Analysis Using Deep Learning Models for Head and Neck Cancer Patients. MSc thesis, NMBU.
- Erlend Kristiansen Risvik and Nina Rebecca Finsrud Lizana. Missing Value Imputation and Survival Analysis for Treatment Outcome Prediction in High-Grade GEP NEN. MSc thesis, NMBU.
- Vilde Butler Wang. Diagnosis of canine hip dysplasia using deep learning. MSc thesis, NMBU.
- Anish Thangalingam og Gurubaran Rajeshwaran. Optimalisere behandlingsutbytte gjennom maskinlæringsbasert prediksjon av medisineffekt i depresjon (Optimizing treatment outcome through machine learning-based prediction of medicine effect on depression). MSc thesis, NMBU.
- Mathea Herberg Brannstorph. Head and neck cancer treatment outcome prediction: a dynamical low-rank model approach. MSc thesis, NMBU.
2023
- Erling Ween Eriksen. Exploration of LET dependent effects in proton beam therapy using machine learning analysis of TL glow curves from CaSO4:Tm and LTB:Cu. MSc thesis, NMBU.
- Sunniva Elisabeth Daae Steiro. Automatisk deteksjon av abnormalitet i hundealbuer. MSc thesis, NMBU.
- Alida Karlstrøm Martinsen. Predicting Treatment Outcome Using Interpretable Models for Patients with Head and Neck Cancer. MSc thesis, NMBU.
- Majorann Thevarajah og Saranjan Anpalagan. Bruk av kunstig intelligens til medisinsk beslutningstøtte: Sammenligning av Dynamic Ensemble Selection med klassiske ML-algoritmer i kreftprediksjon. MSc thesis, NMBU.
2022
- Ahmar Syed Abbas. Uncertainty quantification in automated tumor segmentation using deep learning. MSc thesis, NMBU. https://hdl.handle.net/11250/3041936
- Muhammad Muntazir Naqvi. Machine learning for detecting biomarkers of Alzheimer’s disease: data-centric approach with dynamic ensemble selection. MSc thesis, NMBU. https://hdl.handle.net/11250/3041992
- Krishna Mohan Shah. Identification of biomarkers from Radiomics of brain scans for prediction of major depression using Repeated Elastic Net Technique. MSc thesis, NMBU. https://hdl.handle.net/11250/3036316
- Lars Jetmund Svartis Engesæth. Predicting patient outcome using radioclinical features selected with RENT for patients with colorectal cancer. MSc thesis, NMBU. https://hdl.handle.net/11250/3036071
- Sofie Fjellvang. Prediksjon av behandlingsutfall for hode- og halskreftpasienter ved bruk av radiomics og repetert elastisk nett teknikk. MSc thesis, NMBU. https://hdl.handle.net/11250/3012291
- Rameesha Asghar Khan. Exploration of usability of PLSR for implementation in the RENT feature selection method. MSc thesis, NMBU. https://hdl.handle.net/11250/3066243
2021
- Kristin Tukun. Diagnosing patients with Major Depressive Disorder using radiomics features extracted from MR scans of the brain. MSc thesis, NMBU. https://hdl.handle.net/11250/2835576
- Nasibeh Mohammadi. Radiomics using MR brain scans and RENT for identifying patients receiving ADHD treatment. MSc thesis, NMBU. https://hdl.handle.net/11250/2829804
- Sofie Roko Krogstie. Automatisk segmentering av hode- og halskreft i PET/CT-bilder ved bruk av konvolusjonsnettverk. MSc thesis, NMBU. https://hdl.handle.net/11250/2787997
- Malene Elise Gjengedal. Segmentering av hode- og halskreft i PET/CT-bilder ved bruk av dype nevrale nettverk. MSc thesis, NMBU. https://hdl.handle.net/11250/2787808
- Charlott Kjærre Olofsson. Using machine learning and Repeated Elastic Net Technique for identification of biomarkers of early Alzheimer's disease. MSc thesis, NMBU. https://hdl.handle.net/11250/2980497
- Maria Ødegaard. Effekt av dataaugmentering på dyp læring-basert segmentering av hode- og halskreft i PET/CT-bilder. MSc thesis, NMBU. https://hdl.handle.net/11250/2787803
- Hemanth Babu Sana. Sequential and orthogonalized partial least squares regression applied to healthcare data acquired from patients diagnosed with gastrointestinal carcinoma. MSc thesis, NMBU. https://hdl.handle.net/11250/2789013
- Petter Sunde Nymark. Tsetlin machine for analysis of healthcare data : a comparison with standard machine learning algorithms. MSc thesis, NMBU. https://hdl.handle.net/11250/2827342
- Ghazal Gazelle Azadi. Multi block analysis of gastrointestinal neuroendocrine tumors data using response oriented sequential alternation (ROSA). MSc thesis, NMBU. https://hdl.handle.net/11250/2771366
- Marthe Susann Søvdsnes. Predicting treatment outcome of colorectal cancer from MRI images using machine learning. MSc thesis, NMBU. https://hdl.handle.net/11250/2835569
- Markus Ola Holte Granheim. Medical image representations in cancer segmentation. MSc thesis, NMBU. https://hdl.handle.net/11250/2829882
2020
- Isak Biringvad Lande. Predictive machine learning on SEM and hyperspectral images of uranium ore concentrates (UOCs) for nuclear forensics. MSc thesis, NMBU. https://hdl.handle.net/11250/2727279
- Ahmed Albuni. Development of a user-friendly radiomics framework. MSc thesis, NMBU. https://hdl.handle.net/11250/2721430
- Inger Annett Grünbeck. The effects of methylphenidate on brain structures of ADHD-diagnosed children – Explorative analyses using radiomics features. MSc thesis, NMBU. https://hdl.handle.net/11250/2724853
- Bao Ngoc Huynh. Visualization of deep learning in auto-delineation of cancer tumors. MSc thesis, NMBU. https://hdl.handle.net/11250/2683463
- Afreen Mirza. Automated volumetric delineation of cancer tumors on PET/CT images using 3D convolutional neural network (V-Net). MSc thesis, NMBU. https://hdl.handle.net/11250/2723679
- Tina Sørvik. Establishment of confocal microscopy method for detecting double-strand breaks (DSBs) in DNA after radiation. MSc thesis, NMBU. https://hdl.handle.net/11250/2725449
- Karim El-Hajj Eid. Analysis of proteins from cerebrospinal fluid tests in search of biomarkers characterizing Multiple sclerosis. MSc thesis, NMBU. https://hdl.handle.net/11250/2674332
- Jora Singh Randhawa. Multiblock-model analysis of multi-source Alzheimer’s disease data. MSc thesis, NMBU. https://hdl.handle.net/11250/2753769
2019
- Maria Cabrol. Image processing, radiomics and model selection for prediction of treatment outcome of anal cancer using CT-, PET- and MR-sequences. MSc thesis, NMBU. http://hdl.handle.net/11250/2623765
- Linda Josephine Claesson. Preliminary evaluation of using machine learning to prioritise cancer patients for proton radiotherapy by predicting dose to organs at risk. MSc thesis, NMBU. http://hdl.handle.net/11250/2605602
- Simen Rykkje Grønningsæter. The effect of Losartan treatment assessed using magnetic resonance imaging of humon tumour xenografts. MSc thesis, NMBU. https://hdl.handle.net/11250/2642534
- Christine Kiran Kaushal. Deep learning for automatic tumor delineation of anal cancer based on MRI, PET and CT images. MSc thesis, NMBU. http://hdl.handle.net/11250/2605613
- Geir Severin Rakh Elvatun Langberg. Searching for biomarkers of disease-free survival in head and neck cancers using PET/CT radiomics. MSc thesis, NMBU. https://hdl.handle.net/11250/2641820
- Yngve Mardal Moe. Deep Learning for automatic delineation of tumours from PET/CT images. MSc thesis, NMBU. http://hdl.handle.net/11250/2597305
2018
- Alise Danielle Midtfjord. Prediction of treatment outcome of head and throat cancer using radiomics of PET/CT images. MSc thesis, NMBU. http://hdl.handle.net/11250/2570202
2017
- Martine Mulstad. Assessment of a diagnostic program for autodelineation of head and neck cancer based on PET/CT images. MSc thesis, NMBU. http://hdl.handle.net/11250/2500271
- Kari Helena Kvandal. Explorative analysis of PET/CT-images of head and neck cancer with focus on predicting treatment outcome and HPV status. MSc thesis, NMBU. http://hdl.handle.net/11250/2500109
2016
- Elise Mühlbrandt. Further development of a diagnostic tool for tumour autodelineation of cervical cancers in MR images. MSc thesis, NMBU. http://hdl.handle.net/11250/2399566
- Eirik Jåstad. Explorative analysis of EPR spectra of alanine and Gorilla® glass. MSc thesis, NMBU. http://hdl.handle.net/11250/2399589
2015
- Aurora Rosvoll Grøndahl. Analysis of dynamic contrast enhanced MRI of cervical cancers. MSc thesis, NMBU. http://hdl.handle.net/11250/293972
- Ingvild Skappel. Multivariate Analysis of 18F-FDG PET of three breast cancer xenographs in mice. MSc thesis, NMBU. http://hdl.handle.net/11250/286195
Research areas
Automatic target volume segmentation
Target volume definition is a central part of the workflow in radiotherapy planning, where the aim is to deliver sufficiently large radiation doses to the target, while sparing the surrounding tissue to avoid unpleasant side effects. The current gold standard for target definition is manual contouring in medical images. However, manual delineation is both labour intensive and time consuming and can be prone to uncertainties introduced by intra- and interobserver variations.
Our goal is to develop approaches for automatic target volume segmentation using deep learning or classical machine learning. To date we have focused on automatic segmentation of head and neck tumours and malignant lymph nodes, as well as tumours of the pelvic region (rectal and anal cancers). In addition, tumor segmentation of canine head and neck tumors has been investigated in collaboration with the Faculty of Veterinary Medicine.
Current research interests include impacts of imaging modality (CT, PET, MRI) on segmentation performance, architecture assessment, model optimization, AI interpretability and uncertainty quantification.
Treatment outcome prediction
A large amount of data is accumulated during patient workup and monitoring, such as medical history, vital signs, laboratory tests, medical images, histology, and potentially genomic data. This amounts to high-dimensional datasets consisting of very many variables and images acquired using many different sources. Our aim is to identify patterns within such datasets for the purpose of finding biomarkers and predicting patient treatment outcome using machine learning and deep learning models. Such models and biomarkers can potentially be incorporated into decision support systems paving the way for personalized medicine
Our current approaches include radiomics, design and exploration of feature selection methods as well as investigating methods for analysing multivariate and multi-source data.
Artificial intelligence in veterinary science
There is a growing interest in applying artificial intelligence to the veterinary sciences. Veterinary clinics and research projects have amassed large amounts of patient data in need of rapid processing and analysis. Our aim is to apply machine learning and deep learning to various veterinary applications. Currently, we are focusing on tools for automating diagnostics of elbow and hip dysplasia in canines. In addition, we have explored automatic segmentation of canine tumors and have devised an approach for automatically detecting whether the glottis of mice is open or closed in association with the AntiFENT project.
Method and software development
We develop methods and software for feature selection, feature engineering, image segmentation, as well as multivariate and multi-source data analysis.
Hoggorm
Our chemometrics Python package hoggorm includes classical methods for multivariate statistics such as principal component analysis, principal component regression and partial least squares regression. See our paper in the JOSS for more details on hoggorm.
- GitHub: https://github.com/olivertomic/hoggorm
- hoggorm documentation
- Software paper in Journal of Open Source Software
RENT – Repeated Elastic net for feature selection
RENT is our approach for feature selection from short and wide datasets which have few samples compared to the number of features per sample. The RENT Python package has recently been published in the Journal of Open Source Software (JOSS) . Feature selection methods such as RENT are particularly relevant for medical datasets, where the number of patients is often limited while the number of features characterising each patient is high.
- GitHub: https://github.com/NMBU-Data-Science/RENT
- RENT documentation
- Software paper in Journal of Open Source Software
- Scientific paper on RENT
Deoxys – Framework for running deep-learning experiments with emphasis on cancer tumor auto-segmentation and treatment outcome prediction
Deoyxs is our Python framework for deep learning-based segmentation developed with emphasis on target volume segmentation in medical images. In addition, Deoxys can be used for treatment outcome prediction using convolutional neural networks (CNNs) and medical images or fully connected neural networks (FCNN) and tabular data such as radiomics and/or clinical features. The framework includes modules for data reading, image pre-processing and augmentation, 2D and 3D CNN architectures, parameter options (different loss and activation functions, layer types and optimizers), and an experimental management framework for efficient and systematic model training, evaluation, comparison and logging.
- GitHub: https://github.com/huynhngoc/deoxys
- DEOXYS documentation
ImSkaper – Radiomics feature extraction, feature selection, and classification
ImSkaper is a Python package for the extraction and engineering of image features. ImSkaper extracts the standard radiomics features frequently used for patient treatment outcome prediction. ImSkaper has been extended to include Local Binary Patterns on 3D images.
Group members
Current group members
Former group members
Aurora Rosvoll Grøndahl
Former PhD student
CEHEADS member from 2017 to 2023
Yngve Mardal Moe
Former PhD student
CEHEADS member from 2017 – 2020
Turid Torheim
Former PhD student
CEHEADS member from 2013 – 2016
Anna Jenul
Former PhD student
CEHEADS member from 2019-2023
Stefan Schrunner
Former Post.doc
CEHEADS member from 2019-2023