Szczegóły publikacji

Opis bibliograficzny

Towards clinical applicability and computational efficiency in automatic cranial implant design: an overview of the AutoImplant 2021 cranial implant design challenge / Jianning Li, David G. Ellis, Oldřich Kodym, Laurèl Rauschenbach, Christoph Rieß, Ulrich Sure, Karsten H. Wrede, Carlos M. Alvarez, Marek WODZIŃSKI, Mateusz DANIOŁ, Daria HEMMERLING, Hamza Mahdi, Allison Clement, Evan Kim, Zachary Fishman, Cari M. Whyne, James G. Mainprize, Michael R. Hardisty, Shashwat Pathak, Chitimireddy Sindhura, Rama Krishna Sai S. Gorthi, Degala Venkata Kiran, Subrahmanyam Gorthi, Bokai Yang, Ke Fang, Xingyu Li, Artem Kroviakov, Lei Yu, Yuan Jin, Antonio Pepe, Christina Gsaxner, Adam Herout, Victor Alves, Michal Španěl, Michele R. Aizenberg, Jens Kleesiek, Jan Egger // Medical Image Analysis ; ISSN 1361-8415. — 2023 — vol. 88 art. no. 102865, s. 1–15. — Bibliogr. s. 14–15, Abstr. — Publikacja dostępna online od: 2023-06-09. — M. Wodziński - dod. afiliacja: University of Applied Sciences Western Switzerland (HES-SO Valais), Information Systems Institute, Sierre, Switzerland

Autorzy (37)

  • Li Jianning
  • Ellis David G.
  • Kodym Oldřich
  • Rauschenbach Laurèl
  • Rieß Christoph
  • Sure Ulrich
  • Wrede Karsten H.
  • Alvarez Carlos M.
  • AGHWodziński Marek
  • AGHDanioł Mateusz
  • AGHHemmerling Daria
  • Mahdi Hamza
  • Clement Allison
  • Kim Evan
  • Fishman Zachary
  • Whyne Cari M.
  • Mainprize James G.
  • Hardisty Michael R.
  • Pathak Shashwat
  • Sindhura Chitimireddy
  • Gorthi Rama Krishna Sai S.
  • Kiran Degala Venkata
  • Gorthi Subrahmanyam
  • Yang Bokai
  • Fang Ke
  • Li Xingyu
  • Kroviakov Artem
  • Yu Lei
  • Jin Yuan
  • Pepe Antonio
  • Gsaxner Christina
  • Herout Adam
  • Alves Victor
  • Španěl Michal
  • Aizenberg Michele R.
  • Kleesiek Jens
  • Egger Jan

Słowa kluczowe

shape completioncranioplastysparse convolutional neural networksAutoImplant IIcranial implant designcraniectomydeep learning

Dane bibliometryczne

ID BaDAP147862
Data dodania do BaDAP2023-09-08
Tekst źródłowyURL
DOI10.1016/j.media.2023.102865
Rok publikacji2023
Typ publikacjiartykuł w czasopiśmie
Otwarty dostęptak
Czasopismo/seriaMedical Image Analysis

Abstract

Cranial implants are commonly used for surgical repair of craniectomy-induced skull defects. These implants are usually generated offline and may require days to weeks to be available. An automated implant design process combined with onsite manufacturing facilities can guarantee immediate implant availability and avoid secondary intervention. To address this need, the AutoImplant II challenge was organized in conjunction with MICCAI 2021, catering for the unmet clinical and computational requirements of automatic cranial implant design. The first edition of AutoImplant (AutoImplant I, 2020) demonstrated the general capabilities and effectiveness of data-driven approaches, including deep learning, for a skull shape completion task on synthetic defects. The second AutoImplant challenge (i.e., AutoImplant II, 2021) built upon the first by adding real clinical craniectomy cases as well as additional synthetic imaging data. The AutoImplant II challenge consisted of three tracks. Tracks 1 and 3 used skull images with synthetic defects to evaluate the ability of submitted approaches to generate implants that recreate the original skull shape. Track 3 consisted of the data from the first challenge (i.e., 100 cases for training, and 110 for evaluation), and Track 1 provided 570 training and 100 validation cases aimed at evaluating skull shape completion algorithms at diverse defect patterns. Track 2 also made progress over the first challenge by providing 11 clinically defective skulls and evaluating the submitted implant designs on these clinical cases. The submitted designs were evaluated quantitatively against imaging data from post-craniectomy as well as by an experienced neurosurgeon. Submissions to these challenge tasks made substantial progress in addressing issues such as generalizability, computational efficiency, data augmentation, and implant refinement. This paper serves as a comprehensive summary and comparison of the submissions to the AutoImplant II challenge. Codes and models are available at https://github.com/Jianningli/Autoimplant_II. © 2023 Elsevier B.V.

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artykuł
#143473Data dodania: 15.11.2022
Deep learning-based framework for automatic cranial defect reconstruction and implant modeling / Marek WODZIŃSKI, Mateusz DANIOŁ, Mirosław SOCHA, Daria HEMMERLING, Maciej STANUCH, Andrzej SKALSKI // Computer Methods and Programs in Biomedicine ; ISSN  0169-2607 . — 2022 — vol. 226 art. no. 107173, s. 1–13. — Bibliogr. s. 12–13, Abstr. — Publikacja dostępna online od: 2022-10-11. — M. Wodziński - dod. afiliacje: MedApp S A., Krakow ; University of Applied Sciences Western Switzerland, Sierre, Switzerland; M. Danioł, M. Stanuch, A. Skalski - dod. afiliacja: MedApp S A., Krakow
fragment książki
#138225Data dodania: 15.12.2021
Improving the automatic cranial implant design in cranioplasty by linking different datasets / Marek WODZIŃSKI, Mateusz DANIOŁ, Daria HEMMERLING // W: Towards the automatization of cranial implant design in cranioplasty II : second challenge : AutoImplant 2021 : held in conjunction with MICCAI 2021 : Strasbourg, France, October 1, 2021 : proceedings / eds. Jianning Li, Jan Egger. — Cham : Springer, cop. 2021. — (Lecture Notes in Computer Science ; ISSN 0302-9743 ; LNCS 13123. Image Processing, Computer Vision, Pattern Recognition, and Graphics). — ISBN: 978-3-030-92651-9; e-ISBN: 978-3-030-92652-6. — S. 29–44. — Bibliogr., Abstr. — Publikacja dostępna online od: 2021-12-03. — M. Wodziński – dod. afiliacja: University of Applied Sciences Western Switzerland (HES-SO Valais) Sierre, Switzerland