Machine learning for radiomics-based multimodality and multiparametric modeling

被引:36
作者
Wei, Lise [1 ]
Osman, Sarah [2 ]
Hatt, Mathieu [3 ]
El Naqa, Issam [1 ]
机构
[1] Univ Michigan, Dept Radiat Oncol, Ann Arbor, MI 48109 USA
[2] Queens Univ, Ctr Canc Res & Cell Biol, Belfast, Antrim, North Ireland
[3] Univ Brest, UMR 1101, INSERM, LaTIM, Brest, France
关键词
Multimodal imaging; Deep learning; Oncology; CELL LUNG-CANCER; DEFORMABLE IMAGE REGISTRATION; TEXTURAL FEATURES; SELECTION BIAS; TUMOR RESPONSE; FDG-PET; MRI; RADIOTHERAPY; DIAGNOSIS; HEAD;
D O I
10.23736/S1824-4785.19.03213-8
中图分类号
R8 [特种医学]; R445 [影像诊断学];
学科分类号
1002 ; 100207 ; 1009 ;
摘要
Due to the recent developments of both hardware and software technologies. multimodality medical imaging techniques have been increasingly applied in clinical practice and research studies. Previously, the application of multimodality imaging in oncology has been mainly related to combining anatomical and functional imaging to improve diagnostic specificity and/or target definition, such as positron emission tomography/ computed tomography (PET/CT) and single-photon emission CT (SPECTYCT. More recently, the fusion of various images, such as multiparametnc magnetic resonance imaging (MRI) sequences, different PET tracer images, PET/MRI, has become more prevalent, which has enabled more comprehensive characterization of the tumor phenotype. In order to take advantage of these valuable multimodal data for clinical decision making using radiomics, we present two ways to implement the multimodal image analysis, namely radiomic (handcrafted feature) based and deep learning (machine learned feature) based methods. Applying advanced machine (deep) learning algorithms across multimodality images have shown better results compared with single modality modeling for prognostic and/or prediction of clinical outcomes. This holds great potentials for providing more personalized treatment for patients and achieve better outcomes.
引用
收藏
页码:323 / 338
页数:16
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