Literature DB >> 29947266

A review on radiomics and the future of theranostics for patient selection in precision medicine.

Simon A Keek1, Ralph Th Leijenaar1, Arthur Jochems1, Henry C Woodruff1,2.   

Abstract

The growing complexity and volume of clinical data and the associated decision-making processes in oncology promote the advent of precision medicine. Precision (or personalised) medicine describes preventive and/or treatment procedures that take individual patient variability into account when proscribing treatment, and has been hindered in the past by the strict requirements of accurate, robust, repeatable and preferably non-invasive biomarkers to stratify both the patient and the disease. In oncology, tumour subtypes are traditionally measured through repeated invasive biopsies, which are taxing for the patient and are cost and labour intensive. Quantitative analysis of routine clinical imaging provides an opportunity to capture tumour heterogeneity non-invasively, cost-effectively and on large scale. In current clinical practice radiological images are qualitatively analysed by expert radiologists whose interpretation is known to suffer from inter- and intra-operator variability. Radiomics, the high-throughput mining of image features from medical images, provides a quantitative and robust method to assess tumour heterogeneity, and radiomics-based signatures provide a powerful tool for precision medicine in cancer treatment. This study aims to provide an overview of the current state of radiomics as a precision medicine decision support tool. We first provide an overview of the requirements and challenges radiomics currently faces in being incorporated as a tool for precision medicine, followed by an outline of radiomics' current applications in the treatment of various types of cancer. We finish with a discussion of possible future advances that can further develop radiomics as a precision medicine tool.

Entities:  

Mesh:

Year:  2018        PMID: 29947266      PMCID: PMC6475933          DOI: 10.1259/bjr.20170926

Source DB:  PubMed          Journal:  Br J Radiol        ISSN: 0007-1285            Impact factor:   3.039


  16 in total

1.  Lung cancer histology classification from CT images based on radiomics and deep learning models.

Authors:  Panagiotis Marentakis; Pantelis Karaiskos; Vassilis Kouloulias; Nikolaos Kelekis; Stylianos Argentos; Nikolaos Oikonomopoulos; Constantinos Loukas
Journal:  Med Biol Eng Comput       Date:  2021-01-07       Impact factor: 2.602

Review 2.  High-dimensional role of AI and machine learning in cancer research.

Authors:  Enrico Capobianco
Journal:  Br J Cancer       Date:  2022-01-10       Impact factor: 9.075

3.  18F-fluorodeoxyglucose positron emission tomography/computed tomography-based radiomic features for prediction of epidermal growth factor receptor mutation status and prognosis in patients with lung adenocarcinoma.

Authors:  Bin Yang; Heng-Shan Ji; Chang-Sheng Zhou; Hao Dong; Lu Ma; Ying-Qian Ge; Chao-Hui Zhu; Jia-He Tian; Long-Jiang Zhang; Hong Zhu; Guang-Ming Lu
Journal:  Transl Lung Cancer Res       Date:  2020-06

Review 4.  The Challenges of Diagnostic Imaging in the Era of Big Data.

Authors:  Marco Aiello; Carlo Cavaliere; Antonio D'Albore; Marco Salvatore
Journal:  J Clin Med       Date:  2019-03-06       Impact factor: 4.241

5.  Comparison of radiomics tools for image analyses and clinical prediction in nasopharyngeal carcinoma.

Authors:  Zhong-Guo Liang; Hong Qi Tan; Fan Zhang; Lloyd Kuan Rui Tan; Li Lin; Jacopo Lenkowicz; Haitao Wang; Enya Hui Wen Ong; Grace Kusumawidjaja; Jun Hao Phua; Soon Ann Gan; Sze Yarn Sin; Yan Yee Ng; Terence Wee Tan; Yoke Lim Soong; Kam Weng Fong; Sung Yong Park; Khee-Chee Soo; Joseph Tien Wee; Xiao-Dong Zhu; Vincenzo Valentini; Luca Boldrini; Ying Sun; Melvin Lee Chua
Journal:  Br J Radiol       Date:  2019-08-27       Impact factor: 3.039

6.  Radiomic signature: a non-invasive biomarker for discriminating invasive and non-invasive cases of lung adenocarcinoma.

Authors:  Bin Yang; Lili Guo; Guangming Lu; Wenli Shan; Lizhen Duan; Shaofeng Duan
Journal:  Cancer Manag Res       Date:  2019-08-19       Impact factor: 3.989

Review 7.  Bringing radiomics into a multi-omics framework for a comprehensive genotype-phenotype characterization of oncological diseases.

Authors:  Mario Zanfardino; Monica Franzese; Katia Pane; Carlo Cavaliere; Serena Monti; Giuseppina Esposito; Marco Salvatore; Marco Aiello
Journal:  J Transl Med       Date:  2019-10-07       Impact factor: 5.531

8.  CNN-based survival model for pancreatic ductal adenocarcinoma in medical imaging.

Authors:  Yucheng Zhang; Edrise M Lobo-Mueller; Paul Karanicolas; Steven Gallinger; Masoom A Haider; Farzad Khalvati
Journal:  BMC Med Imaging       Date:  2020-02-03       Impact factor: 1.930

9.  Parallel comparison and combining effect of radiomic and emerging genomic data for prognostic stratification of non-small cell lung carcinoma patients.

Authors:  Ki Hwan Kim; Jinho Kim; Hyunjin Park; Hankyul Kim; Seung-Hak Lee; Insuk Sohn; Ho Yun Lee; Woong-Yang Park
Journal:  Thorac Cancer       Date:  2020-07-22       Impact factor: 3.500

Review 10.  Artificial intelligence, machine learning, computer-aided diagnosis, and radiomics: advances in imaging towards to precision medicine.

Authors:  Marcel Koenigkam Santos; José Raniery Ferreira Júnior; Danilo Tadao Wada; Ariane Priscilla Magalhães Tenório; Marcello Henrique Nogueira Barbosa; Paulo Mazzoncini de Azevedo Marques
Journal:  Radiol Bras       Date:  2019 Nov-Dec
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