Mireștean Camil Ciprian, Iancu Roxana Irina, Iancu Dragoș Petru Teodor
Department of Oncology and Radiotherapy, University of Medicine and Pharmacy Craiova, 200349 Craiova, Romania.
Department of Surgery, Railways Clinical Hospital Iasi, 700506 Iași, Romania.
J Clin Med. 2023 Mar 21;12(6):2413. doi: 10.3390/jcm12062413.
Artificial intelligence (AI) and in particular radiomics has opened new horizons by extracting data from medical imaging that could be used not only to improve diagnostic accuracy, but also to be included in predictive models contributing to treatment stratification of cancer. Head and neck cancers (HNC) are associated with higher recurrence rates, especially in advanced stages of disease. It is considered that approximately 50% of cases will evolve with loco-regional recurrence, even if they will benefit from a current standard treatment consisting of definitive chemo-radiotherapy. Radiotherapy, the cornerstone treatment in locally advanced HNC, could be delivered either by the simultaneous integrated boost (SIB) technique or by the sequential boost technique, the decision often being a subjective one. The principles of radiobiology could be the basis of an optimal decision between the two methods of radiation dose delivery, but the heterogeneity of HNC radio-sensitivity makes this approach difficult. Radiomics has demonstrated the ability to non-invasively predict radio-sensitivity and the risk of relapse in HNC. Tumor heterogeneity evaluated with radiomics, the inclusion of coarseness, entropy and other first order features extracted from gross tumor volume (GTV) in multivariate models could identify pre-treatment cases that will benefit from one of the approaches (SIB or sequential boost radio-chemotherapy) considered the current standard of care for locally advanced HNC. Computer tomography (CT) simulation and daily cone beam CT (CBCT) could be chosen as imaging source for radiomic analysis.
人工智能(AI),尤其是放射组学,通过从医学影像中提取数据开辟了新的视野,这些数据不仅可用于提高诊断准确性,还可纳入预测模型,为癌症治疗分层提供帮助。头颈癌(HNC)的复发率较高,尤其是在疾病晚期。据认为,即使患者将受益于目前由确定性放化疗组成的标准治疗,约50%的病例仍会出现局部区域复发。放射治疗是局部晚期HNC的基石治疗方法,可通过同步整合加量(SIB)技术或序贯加量技术进行,而这一决策往往具有主观性。放射生物学原理可能是两种放射剂量递送方法之间最佳决策的基础,但HNC放射敏感性的异质性使得这种方法难以实施。放射组学已证明能够非侵入性地预测HNC的放射敏感性和复发风险。通过放射组学评估肿瘤异质性,将从大体肿瘤体积(GTV)中提取的粗糙度、熵和其他一阶特征纳入多变量模型,可以识别出将从目前被视为局部晚期HNC标准治疗方法之一(SIB或序贯加量放化疗)中获益的治疗前病例。计算机断层扫描(CT)模拟和每日锥形束CT(CBCT)可被选作放射组学分析的成像源。