نتایج جستجو برای: radiomics

تعداد نتایج: 1808  

Journal: :CoRR 2015
Audrey G. Chung Mohammad Javad Shafiee Devinder Kumar Farzad Khalvati Masoom A. Haider Alexander Wong

Prostate cancer is the most diagnosed form of cancer in Canadian men, and is the third leading cause of cancer death. Despite these statistics, prognosis is relatively good with a sufficiently early diagnosis, making fast and reliable prostate cancer detection crucial. As imaging-based prostate cancer screening, such as magnetic resonance imaging (MRI), requires an experienced medical professio...

Journal: :Frontiers in oncology 2015
Chintan Parmar Patrick Grossmann Derek Rietveld Michelle M. Rietbergen Philippe Lambin Hugo J. W. L. Aerts

INTRODUCTION "Radiomics" extracts and mines a large number of medical imaging features in a non-invasive and cost-effective way. The underlying assumption of radiomics is that these imaging features quantify phenotypic characteristics of an entire tumor. In order to enhance applicability of radiomics in clinical oncology, highly accurate and reliable machine-learning approaches are required. In...

Journal: :CoRR 2017
Zhiguo Zhou Zhi-Jie Zhou Hongxia Hao Shulong Li Xi Chen You Zhang Michael Folkert Jing Wang

Radiomics aims to extract and analyze large numbers of quantitative features from medical images and is highly promising in staging, diagnosing, and predicting outcomes of cancer treatments. Nevertheless, several challenges need to be addressed to construct an optimal radiomics predictive model. First, the predictive performance of the model may be reduced w hen features extracted from an indiv...

2017
Joel Saltz Jonas Almeida Yi Gao Ashish Sharma Erich Bremer Tammy DiPrima Mary Saltz Jayashree Kalpathy-Cramer Tahsin Kurc

Cancer is a complex multifactorial disease state and the ability to anticipate and steer treatment results will require information synthesis across multiple scales from the host to the molecular level. Radiomics and Pathomics, where image features are extracted from routine diagnostic Radiology and Pathology studies, are also evolving as valuable diagnostic and prognostic indicators in cancer....

2018
Despina Kontos Ronald M. Summers Maryellen Giger

2014
Hugo J.W.L. Aerts Emmanuel Rios Velazquez Ralph T.H. Leijenaar Chintan Parmar Patrick Grossmann Sara Carvalho Johan Bussink René Monshouwer Benjamin Haibe-Kains Derek Rietveld Frank Hoebers Michelle M. Rietbergen C. René Leemans Andre Dekker John Quackenbush Robert J. Gillies Philippe Lambin

Journal: :CoRR 2017
Mohammad Javad Shafiee Alexander Wong

While skin cancer is the most diagnosed form of cancer in men and women, with more cases diagnosed each year than all other cancers combined, sufficiently early diagnosis results in very good prognosis and as such makes early detection crucial. While radiomics have shown considerable promise as a powerful diagnostic tool for significantly improving oncological diagnostic accuracy and efficiency...

2017
Dennis Mackin Xenia Fave Lifei Zhang Jinzhong Yang A Kyle Jones Chaan S Ng Laurence Court

Consistent pixel sizes are of fundamental importance for assessing texture features that relate intensity and spatial information in radiomics studies. To correct for the effects of variable pixel sizes, we combined image resampling with Butterworth filtering in the frequency domain and tested the correction on computed tomography (CT) scans of lung cancer patients reconstructed 5 times with pi...

2018
Jia Wu Khin Khin Tha Lei Xing Ruijiang Li

Imaging plays an important role in the diagnosis and staging of cancer, as well as in radiation treatment planning and evaluation of therapeutic response. Recently, there has been significant interest in extracting quantitative information from clinical standard-of-care images, i.e. radiomics, in order to provide a more comprehensive characterization of image phenotypes of the tumor. A number o...

2018
Hubert S. Gabryś Florian Buettner Florian Sterzing Henrik Hauswald Mark Bangert

Purpose The purpose of this study is to investigate whether machine learning with dosiomic, radiomic, and demographic features allows for xerostomia risk assessment more precise than normal tissue complication probability (NTCP) models based on the mean radiation dose to parotid glands. Material and methods A cohort of 153 head-and-neck cancer patients was used to model xerostomia at 0-6 mont...

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