Murphy Andrew Jackson, Pierce Janene, Seeley Erin H, Sullivan Lisa M, Ruchelli Eduardo D, Nance Michael L, Caprioli Richard M, Lovvorn Harold N
Department of Pediatric Surgery, Monroe Carell Jr. Children's Hospital at Vanderbilt, Nashville, Tennessee.
Department of Pediatric Surgery, Monroe Carell Jr. Children's Hospital at Vanderbilt, Nashville, Tennessee.
J Surg Res. 2015 Jun 15;196(2):332-8. doi: 10.1016/j.jss.2015.03.020. Epub 2015 Mar 18.
The 2013 Children's Oncology Group (COG) blueprint for renal tumor research challenges investigators to develop new, risk-specific biological therapies for unfavorable histology and higher-risk Wilms tumor (WT) in an effort to close a persistent survival gap and to reduce treatment toxicities. As an initial response to this call from the COG, we used imaging mass spectrometry to determine peptide profiles of WT associated with adverse outcomes.
We created a WT tissue microarray containing 2-mm punches of formalin-fixed, paraffin-embedded specimens archived from 48 sequentially treated WT patients at our institutions. Imaging mass spectrometry was performed to compare peptide spectra between three patient groups as follows: unfavorable versus favorable histology, treatment success versus failure, and COG higher- versus lower-risk disease. Statistically significant peptide peaks differentiating groups were identified and incorporated into a predictive model using a genetic algorithm.
One hundred thirty-one peptide peaks were differentially expressed in unfavorable versus favorable histology WT (P < 0.05). Two hundred three peaks differentiated treatment failure from success (P < 0.05). Seventy-one peaks differentiated COG higher-risk disease from the very-low, low, and standard-risk groups (P < 0.05). These peaks were used to develop predictive models that could differentiate among patient groups 98.49%, 94.46%, and 98.55% of the time, respectively. Spectral patterns were internally cross-validated using a leave-20% out model.
Peptide spectra can discriminate adverse behavior of WT. After future external validation and refinement, these models could be used to predict WT behavior and to stratify intensity of chemotherapy regimens. Furthermore, peptides discovered in the model could be sequenced to identify potential risk-specific drug targets.
2013年儿童肿瘤学组(COG)的肾肿瘤研究蓝图要求研究人员针对组织学不良和高危威尔姆斯瘤(WT)开发新的、针对风险的生物疗法,以缩小持续存在的生存差距并降低治疗毒性。作为对COG这一呼吁的初步回应,我们使用成像质谱法来确定与不良预后相关的WT肽谱。
我们制作了一个WT组织微阵列,其中包含从我们机构连续治疗的48例WT患者存档的福尔马林固定、石蜡包埋标本的2毫米打孔样本。进行成像质谱法以比较以下三组患者之间的肽谱:组织学不良与良好、治疗成功与失败以及COG高危与低危疾病。识别出区分各组的具有统计学意义的肽峰,并使用遗传算法将其纳入预测模型。
131个肽峰在组织学不良与良好的WT中差异表达(P < 0.05)。203个峰区分了治疗失败与成功(P < 0.05)。71个峰区分了COG高危疾病与极低、低和标准风险组(P < 0.05)。这些峰被用于开发预测模型,分别能够在98.49%、94.46%和98.55%的时间内区分患者组。光谱模式使用留20%法进行内部交叉验证。
肽谱可以区分WT的不良行为。在未来进行外部验证和完善后,这些模型可用于预测WT行为并对化疗方案的强度进行分层。此外,模型中发现的肽可以进行测序以识别潜在的针对风险的药物靶点。