Huehn Marius, Gaebel Jan, Oeser Alexander, Dietz Andreas, Neumuth Thomas, Wichmann Gunnar, Stoehr Matthaeus
Head and Neck Surgery, Department of Otorhinolaryngology, University Hospital Leipzig, 04103 Leipzig, Germany.
Innovation Center Computer Assisted Surgery (ICCAS), Faculty of Medicine, University Leipzig, 04103 Leipzig, Germany.
Cancers (Basel). 2021 Nov 23;13(23):5890. doi: 10.3390/cancers13235890.
New diagnostic methods and novel therapeutic agents spawn additional and heterogeneous information, leading to an increasingly complex decision-making process for optimal treatment of cancer. A great amount of information is collected in organ-specific multidisciplinary tumor boards (MDTBs). By considering the patient's tumor properties, molecular pathological test results, and comorbidities, the MDTB has to consent an evidence-based treatment decision. Immunotherapies are increasingly important in today's cancer treatment, resulting in detailed information that influences the decision-making process. Clinical decision support systems can facilitate a better understanding via processing of multiple datasets of oncological cases and molecular genetic information, potentially fostering transparency and comprehensibility of available information, eventually leading to an optimum treatment decision for the individual patient. We constructed a digital patient model based on Bayesian networks to combine the relevant patient-specific and molecular data with depended probabilities derived from pertinent studies and clinical guidelines to calculate treatment decisions in head and neck squamous cell carcinoma (HNSCC). In a validation analysis, the model can provide guidance within the growing subject of immunotherapy in HNSCC and, based on its ability to calculate reliable probabilities, facilitates estimation of suitable therapy options. We compared actual treatment decisions of 25 patients with the calculated recommendations of our model and found significant concordance (Cohen's = 0.505, = 0.009) and 84% accuracy.
新的诊断方法和新型治疗药物产生了更多且各异的信息,导致癌症最佳治疗的决策过程日益复杂。大量信息在特定器官的多学科肿瘤委员会(MDTBs)中收集。通过考虑患者的肿瘤特性、分子病理检测结果和合并症,MDTB必须做出基于证据的治疗决策。免疫疗法在当今癌症治疗中日益重要,产生了影响决策过程的详细信息。临床决策支持系统可以通过处理肿瘤病例的多个数据集和分子遗传信息来促进更好的理解,潜在地提高可用信息的透明度和可理解性,最终为个体患者做出最佳治疗决策。我们构建了一个基于贝叶斯网络的数字患者模型,将相关的患者特异性和分子数据与从相关研究和临床指南中得出的依赖概率相结合,以计算头颈部鳞状细胞癌(HNSCC)的治疗决策。在一项验证分析中,该模型可以在HNSCC免疫治疗这一不断发展的领域中提供指导,并基于其计算可靠概率的能力,促进对合适治疗方案的估计。我们将25名患者的实际治疗决策与我们模型计算出的建议进行了比较,发现有显著的一致性(科恩系数 = 0.505,P = 0.009)和84%的准确率。