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Automatic Lacunae Localization in Placental Ultrasound Images via Layer Aggregation

机译:通过层聚合在胎盘超声图像中自动腔隙定位

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Accurate localization of structural abnormalities is a precursor for image-based prenatal assessment of adverse conditions. For clinical screening and diagnosis of abnormally invasive placenta (AIP), a life-threatening obstetric condition, qualitative and quantitative analysis of ultrasonic patterns correlated to placental lesions such as placental lacunae (PL) is challenging and time-consuming to perform even for experienced sonographers. There is a need for automated placental lesion localization that does not rely on expensive human annotations such as detailed manual segmentation of anatomical structures. In this paper, we investigate PL localization in 2D placental ultrasound images. First, we demonstrate the effectiveness of generating confidence maps from weak dot annotations in localizing PL as an alternative to expensive manual segmentation. Then we propose a layer aggregation structure based on iterative deep aggregation (IDA) for PL localization. Models with this structure were evaluated with 10-fold cross-validations on an AIP database (containing 3,440 images with 9,618 labelled PL from 23 AIP and 11 non-AIP participants). Experimental results demonstrate that the model with the proposed structure yielded the highest mean average precision (mAP = 35.7%), surpassing all other baseline models (32.6%, 32.2%, 29.7%). We argue that features from shallower stages can contribute to PL localization more effectively using the proposed structure. To our knowledge, this is the first successful application of machine learning to placental lesion analysis and has the potential to be adapted for other clinical scenarios in breast, liver, and prostate cancer imaging.
机译:结构异常的准确定位是基于图像的不良状况产前评估的先驱。对于临床检查和诊断异常浸润性胎盘(AIP)而言,危及生命的产科疾病,与胎盘病变(例如胎盘腔(PL))相关的超声模式的定性和定量分析即使对于有经验的超声检查医师而言也是一项艰巨而费时的工作。需要不依赖昂贵的人类注释(例如解剖结构的详细手动分割)的自动化胎盘病变定位。在本文中,我们研究了二维胎盘超声图像中的PL定位。首先,我们证明了在定位PL时从弱点注释生成置信度图的有效性,以替代昂贵的手动分段。然后,我们提出了基于迭代深度聚合(IDA)的层聚合结构,用于PL定位。具有这种结构的模型在AIP数据库上进行了10倍交叉验证(包含来自3个AIP参与者和11个AIP参与者的3,440张带有9,618个标记PL的图像)。实验结果表明,具有建议结构的模型产生了最高的平均平均精度(mAP = 35.7%),超过了所有其他基线模型(32.6%,32.2%,29.7%)。我们认为,使用拟议的结构,较浅阶段的特征可以更有效地促进PL定位。据我们所知,这是机器学习在胎盘病变分析中的第一个成功应用,并且有可能适用于乳腺癌,肝癌和前列腺癌成像中的其他临床情况。

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