Human-Artificial Intelligence Symbiotic Reporting for Theranostic Cancer Care.

IF 2.4 4区 医学 Q3 MEDICINE, RESEARCH & EXPERIMENTAL Cancer Biotherapy and Radiopharmaceuticals Pub Date : 2024-11-05 DOI:10.1089/cbr.2024.0216
J Harvey Turner
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引用次数: 0

Abstract

Reporting of diagnostic nuclear images in clinical cancer management is generally qualitative. Theranostic treatment with 177Lu radioligands for prostate cancer and neuroendocrine tumors is routinely given as the same arbitrary fixed administered activity to every patient. Nuclear oncology, as currently practiced with 177Lu-prostate-specific membrane antigen and 177Lu peptide receptor radionuclide therapy, cannot, therefore, be characterized as personalized precision medicine. The evolution of artificial intelligence (AI) could change this "one-size-fits-all" approach to theranostics, through development of a symbiotic relationship with physicians. Combining quantitative data collection, collation, and analytic computing power of AI algorithms with the clinical expertise, empathy, and personal care of patients by their physician envisions a new paradigm in theranostic reporting for molecular imaging and radioligand treatment of cancer. Human-AI interaction will facilitate the compilation of a comprehensive, integrated nuclear medicine report. This holistic report would incorporate radiomics to quantitatively analyze diagnostic digital imaging and prospectively calculate the radiation absorbed dose to tumor and critical normal organs. The therapy activity could then be accurately prescribed to deliver a preordained, effective, tumoricidal radiation absorbed dose to tumor, while minimizing toxicity in the particular patient. Post-therapy quantitative imaging would then validate the actual dose delivered and sequential pre- and post-treatment dosimetry each cycle would allow individual dose prescription and monitoring over the entire course of theranostic treatment. Furthermore, the nuclear medicine report would use AI analysis to predict likely clinical outcome, predicated upon AI definition of tumor molecular biology, pathology, and genomics, correlated with clinical history and laboratory data. Such synergistic comprehensive reporting will enable self-assurance of the nuclear physician who will necessarily be deemed personally responsible and accountable for the theranostic clinical outcome. Paradoxically, AI may thus be expected to enhance the practice of phronesis by the nuclear physician and foster a truly empathic trusting relationship with the cancer patient.

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用于癌症治疗的人类-人工智能共生报告。
在临床癌症管理中,核图像诊断报告通常是定性的。使用 177Lu 放射性配体对前列腺癌和神经内分泌肿瘤进行的放射治疗,对每位患者的常规给药剂量都是相同的。因此,目前使用 177Lu 前列腺特异性膜抗原和 177Lu 肽受体放射性核素治疗的核肿瘤学不能被称为个性化精准医疗。人工智能(AI)的发展可以通过与医生建立共生关系,改变这种 "一刀切 "的治疗方法。将人工智能算法的定量数据收集、整理和分析计算能力与医生的临床专业知识、同理心和对患者的个人护理相结合,将为癌症分子成像和放射性治疗的治疗学报告带来新的范例。人与人工智能的互动将有助于编制全面、综合的核医学报告。这份综合报告将结合放射组学,对诊断数字成像进行定量分析,并前瞻性地计算肿瘤和重要正常器官的辐射吸收剂量。然后就可以准确地开出治疗活动处方,为肿瘤提供预定的、有效的、杀瘤的辐射吸收剂量,同时最大限度地减少对特定患者的毒性。治疗后的定量成像将验证实际放射剂量,每个周期治疗前和治疗后的连续剂量测定将允许在整个治疗过程中进行单独剂量处方和监测。此外,核医学报告将利用人工智能分析预测可能的临床结果,预测的依据是人工智能对肿瘤分子生物学、病理学和基因组学的定义,并与临床病史和实验室数据相关联。这种协同作用的综合报告将使核医学医生能够自我保证,他们必然会被视为对治疗临床结果负有个人责任和义务。自相矛盾的是,人工智能可望因此加强核医生的 "phronesis "实践,并促进与癌症患者之间真正感同身受的信任关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
7.80
自引率
2.90%
发文量
87
审稿时长
3 months
期刊介绍: Cancer Biotherapy and Radiopharmaceuticals is the established peer-reviewed journal, with over 25 years of cutting-edge content on innovative therapeutic investigations to ultimately improve cancer management. It is the only journal with the specific focus of cancer biotherapy and is inclusive of monoclonal antibodies, cytokine therapy, cancer gene therapy, cell-based therapies, and other forms of immunotherapies. The Journal includes extensive reporting on advancements in radioimmunotherapy, and the use of radiopharmaceuticals and radiolabeled peptides for the development of new cancer treatments.
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