Flory Andi, Ruiz-Perez Carlos A, Clavere-Graciette Ana G, Rafalko Jill M, O'Kell Allison L, Flesner Brian K, McLennan Lisa M, Hicks Susan C, Nakashe Prachi, Phelps-Dunn Ashley, DiMarzio Lauren R, Warren Chelsea D, Cohen Todd A, Chibuk Jason, Chorny Ilya, Grosu Daniel S, Tsui Dana W Y, Tynan John A, Kruglyak Kristina M
1Medical and Clinical Affairs, PetDx, La Jolla, CA.
2Information Technology, PetDx, La Jolla, CA.
J Am Vet Med Assoc. 2024 Feb 7;262(5):665-673. doi: 10.2460/javma.23.10.0564. Print 2024 May 1.
To validate the performance of a novel, integrated test for canine cancer screening that combines cell-free DNA quantification with next-generation sequencing (NGS) analysis.
Retrospective data from a total of 1,947 cancer-diagnosed and presumably cancer-free dogs were used to validate test performance for the detection of 7 predefined cancer types (lymphoma, hemangiosarcoma, osteosarcoma, leukemia, histiocytic sarcoma, primary lung tumors, and urothelial carcinoma), using independent training and testing sets.
Cell-free DNA quantification data from all samples were analyzed using a proprietary machine learning algorithm to determine a Cancer Probability Index (High, Moderate, or Low). High and Low Probability of Cancer were final result classifications. Moderate cases were additionally analyzed by NGS to arrive at a final classification of High Probability of Cancer (Cancer Signal Detected) or Low Probability of Cancer (Cancer Signal Not Detected).
Of the 595 dogs in the testing set, 89% (n = 530) received a High or Low Probability result based on the machine learning algorithm; 11% (65) were Moderate Probability, and NGS results were used to assign a final classification. Overall, 87 of 122 dogs with the 7 predefined cancer types were classified as High Probability and 467 of 473 presumably cancer-free dogs were classified as Low Probability, corresponding to a sensitivity of 71.3% for the predefined cancer types at a specificity of 98.7%.
This integrated test offers a novel option to screen for cancer types that may be difficult to detect by physical examination at a dog's wellness visit.
验证一种新型的用于犬类癌症筛查的综合检测方法的性能,该方法将游离DNA定量与下一代测序(NGS)分析相结合。
总共1947只已诊断患有癌症和可能未患癌症的犬的回顾性数据被用于验证检测7种预定义癌症类型(淋巴瘤、血管肉瘤、骨肉瘤、白血病、组织细胞肉瘤、原发性肺肿瘤和尿路上皮癌)的检测性能,使用独立的训练集和测试集。
使用专有的机器学习算法分析所有样本的游离DNA定量数据,以确定癌症概率指数(高、中或低)。高癌症概率和低癌症概率是最终结果分类。中度病例另外通过NGS进行分析,以得出高癌症概率(检测到癌症信号)或低癌症概率(未检测到癌症信号)的最终分类。
在测试集中的595只犬中,89%(n = 530)基于机器学习算法获得了高或低概率结果;11%(65只)为中度概率,NGS结果用于确定最终分类。总体而言,122只患有7种预定义癌症类型的犬中有87只被分类为高概率,473只可能未患癌症的犬中有467只被分类为低概率,对于预定义癌症类型,灵敏度为71.3%,特异性为98.7%。
这种综合检测方法为筛查在犬类健康检查中可能难以通过体格检查检测到的癌症类型提供了一种新选择。