Litcius/Paper detail

The progress of multimodal imaging combination and subregion based radiomics research of cancers

Luyuan Zhang, Yumin Wang, Zhouying Peng, Yuxiang Weng, Zebin Fang, Feng Xiao, Chao Zhang, Zuoxu Fan, Kaiyuan Huang, Yu Zhu, Weihong Jiang, Jian Shen, Renya Zhan

2022International Journal of Biological Sciences78 citationsDOIOpen Access PDF

Abstract

In recent years, with the standardization of radiomics methods; development of tools; and popularization of the concept, radiomics has been widely used in all aspects of tumor diagnosis; treatment; and prognosis. As the study of radiomics in cancer has become more advanced, the currently used methods have revealed their shortcomings. The performance of cancer radiomics based on single-modality medical images, which based on their imaging principles, only partially reflects tumor information, has been necessarily compromised. Using the whole tumor as a region of interest to extract radiomic features inevitably leads to the loss of intra-tumoral heterogeneity of, which also affects the performance of radiomics. Radiomics of multimodal images extracts various aspects of information from images of each modality and then integrates them together for model construction; thus, avoiding missing information. Subregional segmentation based on multimodal medical image combinations allows radiomics features acquired from subregions to retain tumor heterogeneity, further improving the performance of radiomics. In this review, we provide a detailed summary of the current research on the radiomics of multimodal images of cancer and tumor subregion-based radiomics, and then raised some of the research problems and also provide a thorough discussion on these issues.

Topics & Concepts

RadiomicsModality (human–computer interaction)Computer scienceStandardizationMultimodal therapyMedical imagingArtificial intelligenceCancer imagingCancerMedicineMedical physicsInternal medicineOperating systemRadiomics and Machine Learning in Medical ImagingRenal cell carcinoma treatmentAI in cancer detection