Wang Yu, Xing Shan, Xu Yi-Wei, Xu Qing-Xia, Ji Ming-Fang, Peng Yu-Hui, Wu Ya-Xian, Wu Meng, Xue Ning, Zhang Biao, Xie Shang-Hang, Zhu Rui-Dan, Ou Xin-Yuan, Huang Qi, Tian Bo-Yu, Li Hui-Lan, Jiang Yu, Yao Xiao-Bin, Li Jian-Pei, Ling Li, Cao Su-Mei, Zhong Qian, Liu Wan-Li, Zeng Mu-Sheng
Department of Experimental Research, State Key Laboratory of Oncology in South China, Guangdong Provincial Clinical Research Center for Cancer, Sun Yat-sen University Cancer Center, Guangzhou, China.
Department of Clinical Laboratory, State Key Laboratory of Oncology in South China, Guangdong Provincial Clinical Research Center for Cancer, Sun Yat-sen University Cancer Center, Guangzhou, China.
Lancet Digit Health. 2024 Oct;6(10):e705-e717. doi: 10.1016/S2589-7500(24)00153-5.
Early detection and screening of oesophageal squamous cell carcinoma rely on upper gastrointestinal endoscopy, which is not feasible for population-wide implementation. Tumour marker-based blood tests offer a potential alternative. However, the sensitivity of current clinical protein detection technologies is inadequate for identifying low-abundance circulating tumour biomarkers, leading to poor discrimination between individuals with and without cancer. We aimed to develop a highly sensitive blood test tool to improve detection of oesophageal squamous cell carcinoma.
We designed a detection platform named SENSORS and validated its effectiveness by comparing its performance in detecting the selected serological biomarkers MMP13 and SCC against ELISA and electrochemiluminescence immunoassay (ECLIA). We then developed a SENSORS-based oesophageal squamous cell carcinoma adjunct diagnostic system (with potential applications in screening and triage under clinical supervision) to classify individuals with oesophageal squamous cell carcinoma and healthy controls in a retrospective study including participants (cohort I) from Sun Yat-sen University Cancer Center (SYSUCC; Guangzhou, China), Henan Cancer Hospital (HNCH; Zhengzhou, China), and Cancer Hospital of Shantou University Medical College (CHSUMC; Shantou, China). The inclusion criteria were age 18 years or older, pathologically confirmed primary oesophageal squamous cell carcinoma, and no cancer treatments before serum sample collection. Participants without oesophageal-related diseases were recruited from the health examination department as the control group. The SENSORS-based diagnostic system is based on a multivariable logistic regression model that uses the detection values of SENSORS as the input and outputs a risk score for the predicted likelihood of oesophageal squamous cell carcinoma. We further evaluated the clinical utility of the system in an independent prospective multicentre study with different participants selected from the same three institutions. Patients with newly diagnosed oesophageal-related diseases without previous cancer treatment were enrolled. The inclusion criteria for healthy controls were no obvious abnormalities in routine blood and tumour marker tests, no oesophageal-associated diseases, and no history of cancer. Finally, we assessed whether classification could be improved by integrating machine-learning algorithms with the system, which combined baseline clinical characteristics, epidemiological risk factors, and serological tumour marker concentrations. Retrospective SYSUCC cohort I (randomly assigned [7:3] to a training set and an internal validation set) and three prospective validation sets (SYSUCC cohort II [internal validation], HNCH cohort II [external validation], and CHSUMC cohort II [external validation]) were used in this step. Six machine-learning algorithms were compared (the least absolute shrinkage and selector operator regression, ridge regression, random forest, logistic regression, support vector machine, and neural network), and the best-performing algorithm was chosen as the final prediction model. Performance of SENSORS and the SENSORS-based diagnostic system was primarily assessed using accuracy, sensitivity, specificity, and area under the receiver operating characteristic curve (AUC).
Between Oct 1, 2017, and April 30, 2020, 1051 participants were included in the retrospective study. In the prospective diagnostic study, 924 participants were included from April 2, 2022, to Feb 2, 2023. Compared with ELISA (108·90 pg/mL) and ECLIA (41·79 pg/mL), SENSORS (243·03 fg/mL) showed 448 times and 172 times improvements, respectively. In the three retrospective validation sets, the SENSORS-based diagnostic system achieved AUCs of 0·95 (95% CI 0·90-0·99) in the SYSUCC internal validation set, 0·93 (0·89-0·97) in the HNCH external validation set, and 0·98 (0·97-1·00) in the CHSUMC external validation set, sensitivities of 87·1% (79·3-92·3), 98·6% (94·4-99·8), and 93·5% (88·1-96·7), and specificities of 88·9% (75·2-95·8), 74·6% (61·3-84·6), and 92·1% (81·7-97·0), respectively, successfully distinguishing between patients with oesophageal squamous cell carcinoma and healthy controls. Additionally, in three prospective validation cohorts, it yielded sensitivities of 90·9% (95% CI 86·1-94·2) for SYSUCC, 84·8% (76·1-90·8) for HNCH, and 95·2% (85·6-98·7) for CHSUMC. Of the six machine-learning algorithms compared, the random forest model showed the best performance. A feature selection step identified five features to have the highest performance to predictions (SCC, age, MMP13, CEA, and NSE) and a simplified random forest model using these five features further improved classification, achieving sensitivities of 98·2% (95% CI 93·2-99·7) in the internal validation set from retrospective SYSUCC cohort I, 94·1% (89·9-96·7) in SYSUCC prospective cohort II, 88·6% (80·5-93·7) in HNCH prospective cohort II, and 98·4% (90·2-99·9) in CHSUMC prospective cohort II.
The SENSORS system facilitates highly sensitive detection of oesophageal squamous cell carcinoma tumour biomarkers, overcoming the limitations of detecting low-abundance circulating proteins, and could substantially improve oesophageal squamous cell carcinoma diagnostics. This method could act as a minimally invasive screening tool, potentially reducing the need for unnecessary endoscopies.
The National Key R&D Program of China, the National Natural Science Foundation of China, and the Enterprises Joint Fund-Key Program of Guangdong Province.
For the Chinese translation of the abstract see Supplementary Materials section.
食管鳞状细胞癌的早期检测和筛查依赖于上消化道内镜检查,但这种方法不适用于大规模人群。基于肿瘤标志物的血液检测提供了一种潜在的替代方法。然而,当前临床蛋白质检测技术的灵敏度不足以识别低丰度循环肿瘤生物标志物,导致患癌个体与未患癌个体之间的区分效果不佳。我们旨在开发一种高灵敏度的血液检测工具,以改善食管鳞状细胞癌的检测。
我们设计了一种名为SENSORS的检测平台,并通过将其检测所选血清生物标志物MMP13和SCC的性能与酶联免疫吸附测定(ELISA)和电化学发光免疫测定(ECLIA)进行比较,验证了其有效性。然后,我们开发了一种基于SENSORS的食管鳞状细胞癌辅助诊断系统(在临床监督下具有筛查和分诊的潜在应用),用于在一项回顾性研究中对食管鳞状细胞癌患者和健康对照进行分类,该研究纳入了来自中山大学肿瘤防治中心(SYSUCC;中国广州)、河南省肿瘤医院(HNCH;中国郑州)和汕头大学医学院附属肿瘤医院(CHSUMC;中国汕头)的参与者(队列I)。纳入标准为年龄18岁及以上、经病理证实的原发性食管鳞状细胞癌,且在采集血清样本前未接受过癌症治疗。从健康体检科招募无食管相关疾病的参与者作为对照组。基于SENSORS的诊断系统基于多变量逻辑回归模型,该模型将SENSORS的检测值作为输入,并输出食管鳞状细胞癌预测可能性的风险评分。我们在一项独立的前瞻性多中心研究中进一步评估了该系统的临床效用,该研究纳入了从上述三个机构中选取的不同参与者。纳入新诊断的无既往癌症治疗史的食管相关疾病患者。健康对照的纳入标准为血常规和肿瘤标志物检测无明显异常、无食管相关疾病且无癌症病史。最后,我们评估了将机器学习算法与该系统相结合是否可以改善分类,该系统结合了基线临床特征、流行病学危险因素和血清肿瘤标志物浓度。在此步骤中使用了回顾性SYSUCC队列I(随机分配[7:3]至训练集和内部验证集)和三个前瞻性验证集(SYSUCC队列II[内部验证]、HNCH队列II[外部验证]和CHSUMC队列II[外部验证])。比较了六种机器学习算法(最小绝对收缩和选择算子回归、岭回归、随机森林、逻辑回归、支持向量机和神经网络),并选择性能最佳的算法作为最终预测模型。主要使用准确性、灵敏度、特异性和受试者操作特征曲线下面积(AUC)评估SENSORS和基于SENSORS的诊断系统的性能。
在2017年10月1日至2020年4月30日期间,1051名参与者被纳入回顾性研究。在前瞻性诊断研究中,2022年4月2日至2023年2月2日期间纳入了924名参与者。与ELISA(108.90 pg/mL)和ECLIA(41.79 pg/mL)相比,SENSORS(243.03 fg/mL)分别显示出448倍和172倍的提升。在三个回顾性验证集中,基于SENSORS的诊断系统在SYSUCC内部验证集中的AUC为0.95(95%CI 0.90 - 0.99),在HNCH外部验证集中为0.93(0.89 - 0.97),在CHSUMC外部验证集中为0.98(0.97 - 1.00),灵敏度分别为87.1%(79.3 - 92.3)、98.6%(94.4 - 99.8)和93.5%(88.1 - 96.7),特异性分别为88.9%(75.2 - 95.8)、74.6%(61.3 - 84.6)和92.1%(81.7 - 97.0),成功区分了食管鳞状细胞癌患者和健康对照。此外,在三个前瞻性验证队列中,SYSUCC的灵敏度为90.9%(95%CI 86.1 - 94.2),HNCH为84.8%(76.1 - 90.8),CHSUMC为95.2%(85.6 - 98.7)。在比较的六种机器学习算法中,随机森林模型表现最佳。特征选择步骤确定了五个对预测性能最高的特征(SCC、年龄、MMP13、CEA和NSE),使用这五个特征的简化随机森林模型进一步改善了分类,在回顾性SYSUCC队列I的内部验证集中灵敏度达到98.2%(95%CI 93.2 - 99.7),在SYSUCC前瞻性队列II中为94.1%(89.9 - 96.7),在HNCH前瞻性队列II中为88.6%(80.5 - 93.7),在CHSUMC前瞻性队列II中为98.4%(90.2 - 99.9)。
SENSORS系统有助于高灵敏度检测食管鳞状细胞癌肿瘤生物标志物,克服了检测低丰度循环蛋白的局限性,并可大幅改善食管鳞状细胞癌的诊断。这种方法可作为一种微创筛查工具,有可能减少不必要的内镜检查需求。
中国国家重点研发计划、中国国家自然科学基金、广东省企业联合基金重点项目。
中文翻译摘要见补充材料部分。