Radiomics, radiogenomics and artificial intelligence in the study of liver and pancreatic tumors

Vittoria ROSSI, Riccardo DE ROBERTIS, Luisa TOMAIUOLO, Luca GERACI, Mirko D’ONOFRIO
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Abstract

Two branches on which precision medicine is based are radiomics and genomics, in particular the latter analyzes the different molecules. The study of the molecules is the basis of the response to treatment and therefore of the choice of the different therapeutic strategies. Currently, radiomic data are typically not incorporated as part of this data stream; however, this is changing with the adoption of structured radiology reporting. The challenge going forward will be to capture radiomic data as part of the structured report. Based on multiple studies about liver and pancreas neoplasms it is clearly visible what radiomics has brought in terms of preoperative prognostic factors related to survival and prognostic stratification, based on degree of aggressiveness of the lesion, as well as the evaluation of factors associated with presence of metastases or presence of vascular microinvasion. Several studies broadly describe genomic approaches to solve different problems in the context of liver and pancreatic imaging. In particular segmentation, quantification, characterization and improvement of image quality. Artificial intelligence will not be able to replace man, who covers a fundamental role; for example, the radiologist’s experience in manual tumor segmentation. Surely the prospect is to bring help in terms of time consumption.
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放射组学、放射基因组学和人工智能在肝脏和胰腺肿瘤研究中的应用
精准医学的两个分支是放射组学和基因组学,特别是后者分析不同的分子。分子的研究是治疗反应的基础,因此也是选择不同治疗策略的基础。目前,放射性数据通常不作为该数据流的一部分;然而,随着结构化放射学报告的采用,这种情况正在改变。未来的挑战将是捕获放射性数据作为结构化报告的一部分。基于对肝脏和胰腺肿瘤的多项研究,可以清楚地看到放射组学在术前预后因素方面带来了什么,这些预后因素与生存和预后分层有关,基于病变的侵袭程度,以及与转移或血管微侵犯存在相关的因素的评估。一些研究广泛地描述了基因组方法来解决肝脏和胰腺成像中的不同问题。特别是分割,量化,表征和提高图像质量。人工智能将无法取代人类,人类扮演着基础性的角色;例如,放射科医生在手工肿瘤分割方面的经验。当然,前景是在时间消耗方面带来帮助。
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