Department of Gastroenterology, China-Japan Friendship Hospital, Beijing, China.
Beijing University of Chinese Medicine, Beijing, China.
Thorac Cancer. 2024 Jun;15(16):1296-1304. doi: 10.1111/1759-7714.15261. Epub 2024 Apr 29.
The accuracy of artificial intelligence (AI) and experts in diagnosing early esophageal cancer (EC) and its infiltration depth was summarized and analyzed, thus identifying the advantages of AI over traditional manual diagnosis, with a view to more accurately assisting doctors in evaluating the patients' conditions and improving their cure and survival rates.
The PubMed, EMBASE, Cochrane, Google, and CNKI databases were searched for relevant literature related to AI diagnosis of early EC and its invasion depth published before August 2023. Summary analysis of pooled sensitivity, specificity, summary receiver operating characteristics (SROC) and area under the curve (AUC) of AI in diagnosing early EC were performed, and Review Manager and Stata were adopted for data analysis.
A total of 19 studies were enrolled with a low to moderate total risk of bias. The pooled sensitivity of AI for diagnosing early EC was markedly higher than that of novices and comparable to that of endoscopists. Moreover, AI predicted early EC with markedly higher AUCs than novices and experts (0.93 vs. 0.74 vs. 0.89). In addition, pooled sensitivity and specificity in the diagnosis of invasion depth in early EC were higher than that of experts, with AUCs of 0.97 and 0.92, respectively.
AI-assistance can diagnose early EC and its infiltration depth more accurately, which can help in its early intervention and the customization of personalized treatment plans. Therefore, AI systems have great potential in the early diagnosis of EC.
总结和分析人工智能(AI)和专家在诊断早期食管癌(EC)及其浸润深度方面的准确性,从而确定 AI 相对于传统手动诊断的优势,以期更准确地协助医生评估患者病情,提高其治愈率和生存率。
检索 2023 年 8 月前发表的与 AI 诊断早期 EC 及其侵袭深度相关的文献,检索PubMed、EMBASE、Cochrane、Google 和 CNKI 数据库。对 AI 诊断早期 EC 的汇总敏感性、特异性、汇总受试者工作特征(SROC)和曲线下面积(AUC)进行汇总分析,并采用 Review Manager 和 Stata 进行数据分析。
共纳入 19 项研究,总偏倚风险为低至中度。AI 诊断早期 EC 的汇总敏感性明显高于新手和内镜医生。此外,AI 预测早期 EC 的 AUC 明显高于新手和专家(0.93 比 0.74 比 0.89)。此外,AI 对早期 EC 浸润深度的诊断具有更高的汇总敏感性和特异性,AUC 分别为 0.97 和 0.92。
AI 辅助可以更准确地诊断早期 EC 及其浸润深度,有助于早期干预和制定个性化治疗方案。因此,AI 系统在早期诊断 EC 方面具有巨大潜力。