Literature DB >> 34191197

Artificial intelligence and hybrid imaging: the best match for personalized medicine in oncology.

Martina Sollini1,2, Francesco Bartoli3, Andrea Marciano3, Roberta Zanca3, Riemer H J A Slart4,5, Paola A Erba6,7.   

Abstract

Artificial intelligence (AI) refers to a field of computer science aimed to perform tasks typically requiring human intelligence. Currently, AI is recognized in the broader technology radar within the five key technologies which emerge for their wide-ranging applications and impact in communities, companies, business, and value chain framework alike. However, AI in medical imaging is at an early phase of development, and there are still hurdles to take related to reliability, user confidence, and adoption. The present narrative review aimed to provide an overview on AI-based approaches (distributed learning, statistical learning, computer-aided diagnosis and detection systems, fully automated image analysis tool, natural language processing) in oncological hybrid medical imaging with respect to clinical tasks (detection, contouring and segmentation, prediction of histology and tumor stage, prediction of mutational status and molecular therapies targets, prediction of treatment response, and outcome). Particularly, AI-based approaches have been briefly described according to their purpose and, finally lung cancer-being one of the most extensively malignancy studied by hybrid medical imaging-has been used as illustrative scenario. Finally, we discussed clinical challenges and open issues including ethics, validation strategies, effective data-sharing methods, regulatory hurdles, educational resources, and strategy to facilitate the interaction among different stakeholders. Some of the major changes in medical imaging will come from the application of AI to workflow and protocols, eventually resulting in improved patient management and quality of life. Overall, several time-consuming tasks could be automatized. Machine learning algorithms and neural networks will permit sophisticated analysis resulting not only in major improvements in disease characterization through imaging, but also in the integration of multiple-omics data (i.e., derived from pathology, genomic, proteomics, and demographics) for multi-dimensional disease featuring. Nevertheless, to accelerate the transition of the theory to practice a sustainable development plan considering the multi-dimensional interactions between professionals, technology, industry, markets, policy, culture, and civil society directed by a mindset which will allow talents to thrive is necessary.

Entities:  

Keywords:  Artificial intelligence; Computer-aided diagnosis systems; Deep learning; Distributed learning; Hybrid imaging; Imaging biomarkers; Machine learning; Natural language processing; PET/CT; Radiomics

Year:  2020        PMID: 34191197     DOI: 10.1186/s41824-020-00094-8

Source DB:  PubMed          Journal:  Eur J Hybrid Imaging        ISSN: 2510-3636


  100 in total

1.  Distributed health data networks: a practical and preferred approach to multi-institutional evaluations of comparative effectiveness, safety, and quality of care.

Authors:  Jeffrey S Brown; John H Holmes; Kiran Shah; Ken Hall; Ross Lazarus; Richard Platt
Journal:  Med Care       Date:  2010-06       Impact factor: 2.983

Review 2.  Deep Learning: A Primer for Radiologists.

Authors:  Gabriel Chartrand; Phillip M Cheng; Eugene Vorontsov; Michal Drozdzal; Simon Turcotte; Christopher J Pal; Samuel Kadoury; An Tang
Journal:  Radiographics       Date:  2017 Nov-Dec       Impact factor: 5.333

3.  Prognostic value of anthropometric measures extracted from whole-body CT using deep learning in patients with non-small-cell lung cancer.

Authors:  Paul Blanc-Durand; Luca Campedel; Sébastien Mule; Simon Jegou; Alain Luciani; Frédéric Pigneur; Emmanuel Itti
Journal:  Eur Radiol       Date:  2020-02-13       Impact factor: 5.315

4.  Early survival prediction in non-small cell lung cancer from PET/CT images using an intra-tumor partitioning method.

Authors:  Mehdi Astaraki; Chunliang Wang; Giulia Buizza; Iuliana Toma-Dasu; Marta Lazzeroni; Örjan Smedby
Journal:  Phys Med       Date:  2019-03-27       Impact factor: 2.685

5.  Radiomics Analysis on FLT-PET/MRI for Characterization of Early Treatment Response in Renal Cell Carcinoma: A Proof-of-Concept Study.

Authors:  Jacob Antunes; Satish Viswanath; Mirabela Rusu; Laia Valls; Christopher Hoimes; Norbert Avril; Anant Madabhushi
Journal:  Transl Oncol       Date:  2016-04       Impact factor: 4.243

6.  Defining a Radiomic Response Phenotype: A Pilot Study using targeted therapy in NSCLC.

Authors:  Hugo J W L Aerts; Patrick Grossmann; Yongqiang Tan; Geoffrey R Oxnard; Naiyer Rizvi; Lawrence H Schwartz; Binsheng Zhao
Journal:  Sci Rep       Date:  2016-09-20       Impact factor: 4.379

7.  Semi-automated analysis of digital whole slides from humanized lung-cancer xenograft models for checkpoint inhibitor response prediction.

Authors:  Daniel Bug; Friedrich Feuerhake; Eva Oswald; Julia Schüler; Dorit Merhof
Journal:  Oncotarget       Date:  2019-07-16

8.  Revisiting the Robustness of PET-Based Textural Features in the Context of Multi-Centric Trials.

Authors:  Clément Bailly; Caroline Bodet-Milin; Solène Couespel; Hatem Necib; Françoise Kraeber-Bodéré; Catherine Ansquer; Thomas Carlier
Journal:  PLoS One       Date:  2016-07-28       Impact factor: 3.240

9.  Distributed deep learning networks among institutions for medical imaging.

Authors:  Ken Chang; Niranjan Balachandar; Carson Lam; Darvin Yi; James Brown; Andrew Beers; Bruce Rosen; Daniel L Rubin; Jayashree Kalpathy-Cramer
Journal:  J Am Med Inform Assoc       Date:  2018-08-01       Impact factor: 7.942

10.  Deep segmentation networks predict survival of non-small cell lung cancer.

Authors:  Stephen Baek; Yusen He; Bryan G Allen; John M Buatti; Brian J Smith; Ling Tong; Zhiyu Sun; Jia Wu; Maximilian Diehn; Billy W Loo; Kristin A Plichta; Steven N Seyedin; Maggie Gannon; Katherine R Cabel; Yusung Kim; Xiaodong Wu
Journal:  Sci Rep       Date:  2019-11-21       Impact factor: 4.379

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  3 in total

Review 1.  Artificial intelligence for nuclear medicine in oncology.

Authors:  Kenji Hirata; Hiroyuki Sugimori; Noriyuki Fujima; Takuya Toyonaga; Kohsuke Kudo
Journal:  Ann Nucl Med       Date:  2022-01-14       Impact factor: 2.668

2.  Role of 3D Printing and Modeling to Aid in Neuroradiology Education for Medical Trainees.

Authors:  Michael A Markovitz; Sen Lu; Narayan A Viswanadhan
Journal:  Fed Pract       Date:  2021-06

3.  Radiomics and gene expression profile to characterise the disease and predict outcome in patients with lung cancer.

Authors:  Margarita Kirienko; Martina Sollini; Marinella Corbetta; Emanuele Voulaz; Noemi Gozzi; Matteo Interlenghi; Francesca Gallivanone; Isabella Castiglioni; Rosanna Asselta; Stefano Duga; Giulia Soldà; Arturo Chiti
Journal:  Eur J Nucl Med Mol Imaging       Date:  2021-05-07       Impact factor: 9.236

  3 in total

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