Augmenting Telepostpartum Care With Vision-Based Detection of Breastfeeding-Related Conditions: Algorithm Development and Validation.

JMIR AI Pub Date : 2024-06-24 DOI:10.2196/54798
Jessica De Souza, Varun Kumar Viswanath, Jessica Maria Echterhoff, Kristina Chamberlain, Edward Jay Wang
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Abstract

Background: Breastfeeding benefits both the mother and infant and is a topic of attention in public health. After childbirth, untreated medical conditions or lack of support lead many mothers to discontinue breastfeeding. For instance, nipple damage and mastitis affect 80% and 20% of US mothers, respectively. Lactation consultants (LCs) help mothers with breastfeeding, providing in-person, remote, and hybrid lactation support. LCs guide, encourage, and find ways for mothers to have a better experience breastfeeding. Current telehealth services help mothers seek LCs for breastfeeding support, where images help them identify and address many issues. Due to the disproportional ratio of LCs and mothers in need, these professionals are often overloaded and burned out.

Objective: This study aims to investigate the effectiveness of 5 distinct convolutional neural networks in detecting healthy lactating breasts and 6 breastfeeding-related issues by only using red, green, and blue images. Our goal was to assess the applicability of this algorithm as an auxiliary resource for LCs to identify painful breast conditions quickly, better manage their patients through triage, respond promptly to patient needs, and enhance the overall experience and care for breastfeeding mothers.

Methods: We evaluated the potential for 5 classification models to detect breastfeeding-related conditions using 1078 breast and nipple images gathered from web-based and physical educational resources. We used the convolutional neural networks Resnet50, Visual Geometry Group model with 16 layers (VGG16), InceptionV3, EfficientNetV2, and DenseNet169 to classify the images across 7 classes: healthy, abscess, mastitis, nipple blebs, dermatosis, engorgement, and nipple damage by improper feeding or misuse of breast pumps. We also evaluated the models' ability to distinguish between healthy and unhealthy images. We present an analysis of the classification challenges, identifying image traits that may confound the detection model.

Results: The best model achieves an average area under the receiver operating characteristic curve of 0.93 for all conditions after data augmentation for multiclass classification. For binary classification, we achieved, with the best model, an average area under the curve of 0.96 for all conditions after data augmentation. Several factors contributed to the misclassification of images, including similar visual features in the conditions that precede other conditions (such as the mastitis spectrum disorder), partially covered breasts or nipples, and images depicting multiple conditions in the same breast.

Conclusions: This vision-based automated detection technique offers an opportunity to enhance postpartum care for mothers and can potentially help alleviate the workload of LCs by expediting decision-making processes.

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通过基于视觉的母乳喂养相关状况检测,加强远程产后护理:算法开发与验证
背景:母乳喂养对母亲和婴儿都有好处,是公共卫生领域关注的话题。分娩后,未经治疗的疾病或缺乏支持导致许多母亲停止母乳喂养。例如,乳头损伤和乳腺炎分别影响了 80% 和 20% 的美国母亲。哺乳顾问(LC)帮助母亲进行母乳喂养,提供面对面、远程和混合哺乳支持。泌乳顾问指导、鼓励并想方设法让母亲获得更好的母乳喂养体验。目前的远程医疗服务可帮助母亲寻求哺乳指导师的母乳喂养支持,图像可帮助她们发现并解决许多问题。由于母乳喂养咨询师和有需要的母亲的比例失调,这些专业人员经常超负荷工作,疲惫不堪:本研究旨在调查 5 种不同的卷积神经网络在检测健康哺乳乳房和 6 种母乳喂养相关问题时的有效性,只使用红色、绿色和蓝色图像。我们的目标是评估该算法作为辅助资源的适用性,以便 LCs 快速识别乳房疼痛状况,通过分流更好地管理患者,及时响应患者需求,并提升母乳喂养母亲的整体体验和护理:我们使用从网络和实体教育资源中收集的 1078 张乳房和乳头图像,评估了 5 个分类模型检测母乳喂养相关疾病的潜力。我们使用卷积神经网络 Resnet50、具有 16 层的视觉几何组模型 (VGG16)、InceptionV3、EfficientNetV2 和 DenseNet169 对图像进行了 7 个类别的分类:健康、脓肿、乳腺炎、乳头出血、皮炎、充血以及因喂养不当或滥用吸奶器造成的乳头损伤。我们还评估了模型区分健康和不健康图像的能力。我们对分类挑战进行了分析,找出了可能会干扰检测模型的图像特征:结果:对于多类分类,最佳模型在数据增强后,在所有条件下的接收器工作特征曲线下的平均面积为 0.93。在二元分类中,使用最佳模型,数据扩增后所有条件下的平均曲线下面积为 0.96。导致图像分类错误的因素有很多,包括先于其他病症(如乳腺炎谱系障碍)的病症中的相似视觉特征、部分覆盖的乳房或乳头,以及描述同一乳房中多种病症的图像:这种基于视觉的自动检测技术为加强产后母亲护理提供了机会,并有可能通过加快决策过程来减轻乳腺科医生的工作量。
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