Yonsei University College of Medicine, Severance Hospital, Yonsei University Health System, Seoul, Republic of Korea.
Department of Biomedical Systems Informatics, Yonsei University College of Medicine, Seoul, Republic of Korea.
JAMA Netw Open. 2023 Dec 1;6(12):e2347692. doi: 10.1001/jamanetworkopen.2023.47692.
Screening for autism spectrum disorder (ASD) is constrained by limited resources, particularly trained professionals to conduct evaluations. Individuals with ASD have structural retinal changes that potentially reflect brain alterations, including visual pathway abnormalities through embryonic and anatomic connections. Whether deep learning algorithms can aid in objective screening for ASD and symptom severity using retinal photographs is unknown.
To develop deep ensemble models to differentiate between retinal photographs of individuals with ASD vs typical development (TD) and between individuals with severe ASD vs mild to moderate ASD.
DESIGN, SETTING, AND PARTICIPANTS: This diagnostic study was conducted at a single tertiary-care hospital (Severance Hospital, Yonsei University College of Medicine) in Seoul, Republic of Korea. Retinal photographs of individuals with ASD were prospectively collected between April and October 2022, and those of age- and sex-matched individuals with TD were retrospectively collected between December 2007 and February 2023. Deep ensembles of 5 models were built with 10-fold cross-validation using the pretrained ResNeXt-50 (32×4d) network. Score-weighted visual explanations for convolutional neural networks, with a progressive erasing technique, were used for model visualization and quantitative validation. Data analysis was performed between December 2022 and October 2023.
Autism Diagnostic Observation Schedule-Second Edition calibrated severity scores (cutoff of 8) and Social Responsiveness Scale-Second Edition T scores (cutoff of 76) were used to assess symptom severity.
The main outcomes were participant-level area under the receiver operating characteristic curve (AUROC), sensitivity, and specificity. The 95% CI was estimated through the bootstrapping method with 1000 resamples.
This study included 1890 eyes of 958 participants. The ASD and TD groups each included 479 participants (945 eyes), had a mean (SD) age of 7.8 (3.2) years, and comprised mostly boys (392 [81.8%]). For ASD screening, the models had a mean AUROC, sensitivity, and specificity of 1.00 (95% CI, 1.00-1.00) on the test set. These models retained a mean AUROC of 1.00 using only 10% of the image containing the optic disc. For symptom severity screening, the models had a mean AUROC of 0.74 (95% CI, 0.67-0.80), sensitivity of 0.58 (95% CI, 0.49-0.66), and specificity of 0.74 (95% CI, 0.67-0.82) on the test set.
These findings suggest that retinal photographs may be a viable objective screening tool for ASD and possibly for symptom severity. Retinal photograph use may speed the ASD screening process, which may help improve accessibility to specialized child psychiatry assessments currently strained by limited resources.
自闭症谱系障碍(ASD)的筛查受到资源限制,特别是缺乏专业评估人员。ASD 患者存在结构视网膜变化,这可能反映了大脑的改变,包括胚胎和解剖连接中的视觉通路异常。深度学习算法是否可以帮助使用视网膜照片对 ASD 进行客观筛查以及对症状严重程度进行分类,目前尚不清楚。
开发深度集成模型,以区分 ASD 患者与典型发育(TD)患者的视网膜照片,以及严重 ASD 患者与轻度至中度 ASD 患者的视网膜照片。
设计、设置和参与者:这是一项在韩国首尔延世大学医学院塞弗伦斯医院进行的单中心三级保健医院的诊断研究。ASD 患者的视网膜照片于 2022 年 4 月至 10 月期间前瞻性收集,而年龄和性别匹配的 TD 患者的视网膜照片则于 2007 年 12 月至 2023 年 2 月期间回顾性收集。使用经过预训练的 ResNeXt-50(32×4d)网络,通过 10 倍交叉验证构建了 5 个模型的深度集成。使用渐进式擦除技术的卷积神经网络得分加权可视化解释用于模型可视化和定量验证。数据分析于 2022 年 12 月至 2023 年 10 月进行。
使用自闭症诊断观察量表-第二版校准严重程度评分(8 分的截止值)和社交反应量表-第二版 T 评分(76 分的截止值)评估症状严重程度。
主要结局是参与者水平的接收器操作特征曲线(AUROC)下面积、敏感性和特异性。95%置信区间通过 1000 次重复的自举法进行估计。
这项研究包括 1890 只眼睛的 958 名参与者。ASD 和 TD 组各包括 479 名参与者(945 只眼睛),平均(SD)年龄为 7.8(3.2)岁,大多数为男孩(392[81.8%])。对于 ASD 筛查,模型在测试集中的平均 AUROC、敏感性和特异性均为 1.00(95%CI,1.00-1.00)。这些模型在仅使用包含视盘的 10%图像时保留了平均 AUROC 为 1.00。对于症状严重程度筛查,模型在测试集中的平均 AUROC 为 0.74(95%CI,0.67-0.80),敏感性为 0.58(95%CI,0.49-0.66),特异性为 0.74(95%CI,0.67-0.82)。
这些发现表明,视网膜照片可能是 ASD 以及可能是症状严重程度的可行客观筛查工具。视网膜照片的使用可能会加快 ASD 筛查过程,这可能有助于提高目前因资源有限而难以获得的专门儿童精神病学评估的可及性。