Institute of Data Science & Computing, University of Miami, 1320 S. Dixie Highway, 600, Coral Gables, FL, 33146, USA.
Br J Cancer. 2022 Mar;126(4):523-532. doi: 10.1038/s41416-021-01689-z. Epub 2022 Jan 10.
The role of Artificial Intelligence and Machine Learning in cancer research offers several advantages, primarily scaling up the information processing and increasing the accuracy of the clinical decision-making. The key enabling tools currently in use in Precision, Digital and Translational Medicine, here named as 'Intelligent Systems' (IS), leverage unprecedented data volumes and aim to model their underlying heterogeneous influences and variables correlated with patients' outcomes. As functionality and performance of IS are associated with complex diagnosis and therapy decisions, a rich spectrum of patterns and features detected in high-dimensional data may be critical for inference purposes. Many challenges are also present in such discovery task. First, the generation of interpretable model results from a mix of structured and unstructured input information. Second, the design, and implementation of automated clinical decision processes for drawing disease trajectories and patient profiles. Ultimately, the clinical impacts depend on the data effectively subjected to steps such as harmonisation, integration, validation, etc. The aim of this work is to discuss the transformative value of IS applied to multimodal data acquired through various interrelated cancer domains (high-throughput genomics, experimental biology, medical image processing, radiomics, patient electronic records, etc.).
人工智能和机器学习在癌症研究中的应用具有几个优势,主要是能够扩大信息处理规模并提高临床决策的准确性。目前在精准医学、数字医学和转化医学中使用的关键使能工具,这里称为“智能系统”(IS),利用了前所未有的数据量,并旨在对与患者结果相关的异质影响和变量进行建模。由于 IS 的功能和性能与复杂的诊断和治疗决策相关,因此在高维数据中检测到的丰富模式和特征对于推理目的可能至关重要。在这样的发现任务中也存在许多挑战。首先,从结构化和非结构化输入信息的混合中生成可解释的模型结果。其次,设计和实施用于绘制疾病轨迹和患者特征的自动化临床决策过程。最终,临床影响取决于数据的有效应用,例如协调、整合、验证等。这项工作的目的是讨论应用于通过各种相关癌症领域(高通量基因组学、实验生物学、医学图像处理、放射组学、患者电子记录等)获取的多模态数据的 IS 的变革价值。