Fares Antaki, Imane Hammana, Marie-Catherine Tessier, Andrée Boucher, Maud Laurence David Jetté, Catherine Beauchemin, Karim Hammamji, Ariel Yuhan Ong, Marc-André Rhéaume, Danny Gauthier, Mona Harissi-Dagher, Pearse A Keane, Alfons Pomp
{"title":"在魁北克一家三级医院实施基于人工智能的糖尿病视网膜病变筛查:前瞻性验证研究","authors":"Fares Antaki, Imane Hammana, Marie-Catherine Tessier, Andrée Boucher, Maud Laurence David Jetté, Catherine Beauchemin, Karim Hammamji, Ariel Yuhan Ong, Marc-André Rhéaume, Danny Gauthier, Mona Harissi-Dagher, Pearse A Keane, Alfons Pomp","doi":"10.2196/59867","DOIUrl":null,"url":null,"abstract":"<p><strong>Background: </strong>Diabetic retinopathy (DR) affects about 25% of people with diabetes in Canada. Early detection of DR is essential for preventing vision loss.</p><p><strong>Objective: </strong>We evaluated the real-world performance of an artificial intelligence (AI) system that analyzes fundus images for DR screening in a Quebec tertiary care center.</p><p><strong>Methods: </strong>We prospectively recruited adult patients with diabetes at the Centre hospitalier de l'Université de Montréal (CHUM) in Montreal, Quebec, Canada. Patients underwent dual-pathway screening: first by the Computer Assisted Retinal Analysis (CARA) AI system (index test), then by standard ophthalmological examination (reference standard). We measured the AI system's sensitivity and specificity for detecting referable disease at the patient level, along with its performance for detecting any retinopathy and diabetic macular edema (DME) at the eye level, and potential cost savings.</p><p><strong>Results: </strong>This study included 115 patients. CARA demonstrated a sensitivity of 87.5% (95% CI 71.9-95.0) and specificity of 66.2% (95% CI 54.3-76.3) for detecting referable disease at the patient level. For any retinopathy detection at the eye level, CARA showed 88.2% sensitivity (95% CI 76.6-94.5) and 71.4% specificity (95% CI 63.7-78.1). For DME detection, CARA had 100% sensitivity (95% CI 64.6-100) and 81.9% specificity (95% CI 75.6-86.8). Potential yearly savings from implementing CARA at the CHUM were estimated at CAD $245,635 (US $177,643.23, as of July 26, 2024) considering 5000 patients with diabetes.</p><p><strong>Conclusions: </strong>Our study indicates that integrating a semiautomated AI system for DR screening demonstrates high sensitivity for detecting referable disease in a real-world setting. This system has the potential to improve screening efficiency and reduce costs at the CHUM, but more work is needed to validate it.</p>","PeriodicalId":52371,"journal":{"name":"JMIR Diabetes","volume":"9 ","pages":"e59867"},"PeriodicalIF":0.0000,"publicationDate":"2024-09-03","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"https://www.ncbi.nlm.nih.gov/pmc/articles/PMC11408885/pdf/","citationCount":"0","resultStr":"{\"title\":\"Implementation of Artificial Intelligence-Based Diabetic Retinopathy Screening in a Tertiary Care Hospital in Quebec: Prospective Validation Study.\",\"authors\":\"Fares Antaki, Imane Hammana, Marie-Catherine Tessier, Andrée Boucher, Maud Laurence David Jetté, Catherine Beauchemin, Karim Hammamji, Ariel Yuhan Ong, Marc-André Rhéaume, Danny Gauthier, Mona Harissi-Dagher, Pearse A Keane, Alfons Pomp\",\"doi\":\"10.2196/59867\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<p><strong>Background: </strong>Diabetic retinopathy (DR) affects about 25% of people with diabetes in Canada. Early detection of DR is essential for preventing vision loss.</p><p><strong>Objective: </strong>We evaluated the real-world performance of an artificial intelligence (AI) system that analyzes fundus images for DR screening in a Quebec tertiary care center.</p><p><strong>Methods: </strong>We prospectively recruited adult patients with diabetes at the Centre hospitalier de l'Université de Montréal (CHUM) in Montreal, Quebec, Canada. Patients underwent dual-pathway screening: first by the Computer Assisted Retinal Analysis (CARA) AI system (index test), then by standard ophthalmological examination (reference standard). We measured the AI system's sensitivity and specificity for detecting referable disease at the patient level, along with its performance for detecting any retinopathy and diabetic macular edema (DME) at the eye level, and potential cost savings.</p><p><strong>Results: </strong>This study included 115 patients. 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引用次数: 0
摘要
背景:加拿大约有 25% 的糖尿病患者患有糖尿病视网膜病变 (DR)。早期发现糖尿病视网膜病变对预防视力丧失至关重要:我们在魁北克省的一家三级医疗中心评估了人工智能(AI)系统的实际性能,该系统可分析眼底图像以筛查糖尿病视网膜病变:我们在加拿大魁北克省蒙特利尔的蒙特利尔大学医院中心(CHUM)招募了成年糖尿病患者。患者接受了双通道筛查:首先是计算机辅助视网膜分析(CARA)人工智能系统(指标测试),然后是标准眼科检查(参考标准)。我们测量了计算机辅助视网膜分析系统在患者层面检测可转诊疾病的灵敏度和特异性,以及在眼睛层面检测任何视网膜病变和糖尿病黄斑水肿(DME)的性能和潜在的成本节约:这项研究包括 115 名患者。CARA 在患者层面检测可转诊疾病的灵敏度为 87.5%(95% CI 71.9-95.0),特异性为 66.2%(95% CI 54.3-76.3)。对于眼部视网膜病变的检测,CARA 的灵敏度为 88.2%(95% CI 76.6-94.5),特异度为 71.4%(95% CI 63.7-78.1)。对于 DME 检测,CARA 的灵敏度为 100%(95% CI 64.6-100),特异度为 81.9%(95% CI 75.6-86.8)。考虑到有5000名糖尿病患者,估计在CHUM实施CARA每年可节省245,635加元(177,643.23美元,截至2024年7月26日):我们的研究表明,将半自动化人工智能系统集成到 DR 筛查中,在真实世界环境中检测可转诊疾病的灵敏度很高。该系统有可能提高筛查效率,降低社区医疗中心的成本,但还需要更多的工作来验证它。
Implementation of Artificial Intelligence-Based Diabetic Retinopathy Screening in a Tertiary Care Hospital in Quebec: Prospective Validation Study.
Background: Diabetic retinopathy (DR) affects about 25% of people with diabetes in Canada. Early detection of DR is essential for preventing vision loss.
Objective: We evaluated the real-world performance of an artificial intelligence (AI) system that analyzes fundus images for DR screening in a Quebec tertiary care center.
Methods: We prospectively recruited adult patients with diabetes at the Centre hospitalier de l'Université de Montréal (CHUM) in Montreal, Quebec, Canada. Patients underwent dual-pathway screening: first by the Computer Assisted Retinal Analysis (CARA) AI system (index test), then by standard ophthalmological examination (reference standard). We measured the AI system's sensitivity and specificity for detecting referable disease at the patient level, along with its performance for detecting any retinopathy and diabetic macular edema (DME) at the eye level, and potential cost savings.
Results: This study included 115 patients. CARA demonstrated a sensitivity of 87.5% (95% CI 71.9-95.0) and specificity of 66.2% (95% CI 54.3-76.3) for detecting referable disease at the patient level. For any retinopathy detection at the eye level, CARA showed 88.2% sensitivity (95% CI 76.6-94.5) and 71.4% specificity (95% CI 63.7-78.1). For DME detection, CARA had 100% sensitivity (95% CI 64.6-100) and 81.9% specificity (95% CI 75.6-86.8). Potential yearly savings from implementing CARA at the CHUM were estimated at CAD $245,635 (US $177,643.23, as of July 26, 2024) considering 5000 patients with diabetes.
Conclusions: Our study indicates that integrating a semiautomated AI system for DR screening demonstrates high sensitivity for detecting referable disease in a real-world setting. This system has the potential to improve screening efficiency and reduce costs at the CHUM, but more work is needed to validate it.