Bodoque-Cubas Javier, Fernández-Sáez José, Martínez-Hervás Sergio, Pérez-Lacasta María José, Carles-Lavila Misericòrdia, Pallarés-Gasulla Raquel María, Salazar-González Juan José, Gil-Boix José Vicente, Miret-Llauradó Marcel la, Aulinas-Masó Anna, Argüelles-Jiménez Iñaki, Tofé-Povedano Santiago
Rovira i Virigili University. Faculty of Medicine. PhD School of Biomedical Sciences. Catalunya Avenue, 35, 43002, Tarragona, Catalonia, Spain.
Endocrinology and Nutrition Department. Verge de la Cinta Hospital, Carrer de les Esplanetes, 44-58, 43500 Tortosa, Catalonia, Spain.
J Clin Endocrinol Metab. 2025 Jul 12. doi: 10.1210/clinem/dgaf399.
The increasing incidence of thyroid nodules (TN) raises concerns about overdiagnosis and overtreatment. This study evaluates the clinical and economic impact of KOIOS, an FDA-approved artificial intelligence (AI) tool for the management of TN.
A retrospective analysis was conducted on 176 patients who underwent thyroid surgery between May 2022 and November 2024. Ultrasound images were evaluated independently by an expert and novice operators using the American College of Radiology Thyroid Imaging Reporting and Data System (ACR-TIRADS), while KOIOS provided AI-adapted risk stratification. Sensitivity, specificity, and Receiver-Operating Curve (ROC) analysis were performed. The incremental cost-effectiveness ratio (ICER) was defined based on the number of optimal care interventions (FNAB and thyroid surgery). Both deterministic and probabilistic sensitivity analyses were conducted to evaluate model robustness.
KOIOS AI demonstrated similar diagnostic performance to the expert operator (AUC: 0.794, 95% CI: 0.718-0.871 vs. 0.784, 95% CI: 0.706-0.861; p = 0.754) and significantly outperformed the novice operator (AUC: 0.619, 95% CI: 0.526-0.711; p < 0.001). ICER analysis estimated the cost per additional optimal care decision at -€8,085.56, indicating KOIOS as a dominant and cost-saving strategy when considering a third-party payer perspective over a one-year horizon. Deterministic sensitivity analysis identified surgical costs as the main drivers of variability, while probabilistic analysis consistently favored KOIOS as the optimal strategy.
KOIOS AI is a cost-effective alternative, particularly in reducing overdiagnosis and overtreatment for benign TNs. Prospective, real-life studies are needed to validate these findings and explore long-term implications.
甲状腺结节(TN)发病率的不断上升引发了对过度诊断和过度治疗的担忧。本研究评估了KOIOS的临床和经济影响,KOIOS是一种经美国食品药品监督管理局(FDA)批准用于甲状腺结节管理的人工智能(AI)工具。
对2022年5月至2024年11月期间接受甲状腺手术的176例患者进行回顾性分析。由专家和新手操作员使用美国放射学会甲状腺影像报告和数据系统(ACR-TIRADS)独立评估超声图像,而KOIOS提供人工智能适配的风险分层。进行敏感性、特异性和受试者操作特征曲线(ROC)分析。基于最佳护理干预措施(细针穿刺抽吸活检和甲状腺手术)的数量定义增量成本效益比(ICER)。进行确定性和概率性敏感性分析以评估模型的稳健性。
KOIOS人工智能的诊断性能与专家操作员相似(曲线下面积[AUC]:0.794,95%置信区间[CI]:0.718 - 0.871对比0.784,95% CI:0.706 - 0.861;p = 0.754),并且显著优于新手操作员(AUC:0.619,95% CI:0.526 - 0.711;p < 0.001)。ICER分析估计每增加一个最佳护理决策的成本为-8,085.56欧元,表明从第三方支付者的角度在一年时间范围内考虑时,KOIOS是一种占优且节省成本的策略。确定性敏感性分析确定手术成本是变异性的主要驱动因素,而概率性分析始终支持KOIOS作为最佳策略。
KOIOS人工智能是一种具有成本效益的替代方案,特别是在减少良性甲状腺结节的过度诊断和过度治疗方面。需要进行前瞻性的实际研究来验证这些发现并探索其长期影响。