Robertson Scott P, Quon Harry, Kiess Ana P, Moore Joseph A, Yang Wuyang, Cheng Zhi, Afonso Sarah, Allen Mysha, Richardson Marian, Choflet Amanda, Sharabi Andrew, McNutt Todd R
Department of Radiation Oncology and Molecular Radiation Science, School of Medicine, Johns Hopkins University, Baltimore, Maryland 21231.
Med Phys. 2015 Jul;42(7):4329-37. doi: 10.1118/1.4922686.
To develop a hypothesis-generating framework for automatic extraction of dose-outcome relationships from an in-house, analytic oncology database.
Dose-volume histograms (DVH) and clinical outcomes have been routinely stored to the authors' database for 684 head and neck cancer patients treated from 2007 to 2014. Database queries were developed to extract outcomes that had been assessed for at least 100 patients, as well as DVH curves for organs-at-risk (OAR) that were contoured for at least 100 patients. DVH curves for paired OAR (e.g., left and right parotids) were automatically combined and included as additional structures for analysis. For each OAR-outcome combination, only patients with both OAR and outcome records were analyzed. DVH dose points, DVt, at a given normalized volume threshold Vt were stratified into two groups based on severity of toxicity outcomes after treatment completion. The probability of an outcome was modeled at each Vt = [0%, 1%, …, 100%] by logistic regression. Notable OAR-outcome combinations were defined as having statistically significant regression parameters (p < 0.05) and an odds ratio of at least 1.05 (5% increase in odds per Gy).
A total of 57 individual and combined structures and 97 outcomes were queried from the database. Of all possible OAR-outcome combinations, 17% resulted in significant logistic regression fits (p < 0.05) having an odds ratio of at least 1.05. Further manual inspection revealed a number of reasonable models based on either reported literature or proximity between neighboring OARs. The data-mining algorithm confirmed the following well-known OAR-dose/outcome relationships: dysphagia/larynx, voice changes/larynx, esophagitis/esophagus, xerostomia/parotid glands, and mucositis/oral mucosa. Several surrogate relationships, defined as OAR not directly attributed to an outcome, were also observed, including esophagitis/larynx, mucositis/mandible, and xerostomia/mandible.
Prospective collection of clinical data has enabled large-scale analysis of dose-outcome relationships. The current data-mining framework revealed both known and novel dosimetric and clinical relationships, underscoring the potential utility of this analytic approach in hypothesis generation. Multivariate models and advanced, 3D dosimetric features may be necessary to further evaluate the complex relationship between neighboring OAR and observed outcomes.
开发一个假设生成框架,用于从内部肿瘤分析数据库中自动提取剂量-结局关系。
自2007年至2014年,作者的数据库中已常规存储了684例头颈部癌患者的剂量体积直方图(DVH)和临床结局。开发了数据库查询,以提取至少100例患者已评估的结局,以及至少100例患者已勾勒轮廓的危及器官(OAR)的DVH曲线。配对OAR(例如左右腮腺)的DVH曲线自动合并,并作为额外的结构纳入分析。对于每种OAR-结局组合,仅分析同时具有OAR和结局记录的患者。在治疗完成后,根据毒性结局的严重程度,将给定归一化体积阈值Vt下的DVH剂量点DVt分层为两组。通过逻辑回归对每个Vt = [0%,1%,…,100%]时的结局概率进行建模。显著的OAR-结局组合定义为具有统计学显著的回归参数(p < 0.05)且优势比至少为为1.05(每Gy优势增加5%)。
从数据库中查询了总共57个单独和组合的结构以及97个结局。在所有可能的OAR-结局组合中,17%产生了显著的逻辑回归拟合(p < 0.05),优势比至少为1.05。进一步的人工检查发现了一些基于已发表文献或相邻OAR之间接近程度的合理模型。数据挖掘算法证实了以下众所周知的OAR-剂量/结局关系:吞咽困难/喉、声音改变/喉、食管炎/食管、口干/腮腺、以及粘膜炎/口腔粘膜。还观察到了几种替代关系,定义为OAR与结局无直接关联,包括食管炎/喉、粘膜炎/下颌骨、以及口干/下颌骨。
临床数据的前瞻性收集使得能够对剂量-结局关系进行大规模分析。当前的数据挖掘框架揭示了已知和新的剂量学及临床关系,强调了这种分析方法在假设生成中的潜在效用。可能需要多变量模型和先进的三维剂量学特征来进一步评估相邻OAR与观察到的结局之间的复杂关系。