医学微波成像中深度学习方法局部评价的边界-重叠大小综合度量

IF 3 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Fei Xue;Lei Guo;Alina Bialkowski;Amin M. Abbosh
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引用次数: 0

摘要

深度学习在提高医学微波成像检测异常病变的速度和准确性方面已经改变了游戏规则。然而,挑战在于建立一个普遍的客观指标来评估这些方法的可靠性。当前的评估实践常常依赖于单一的几何度量,这就产生了固有的限制。因此,对深度学习方法产生的结果的评估可能并不总是反映临床医生的见解和判断。为了克服这一点,提出了包含以下三个几何维度的局部评估度量:检测到的异常与实际病变之间的重叠,它们边界的接近程度,以及算法确定的病变大小与实际病变的比例。这种评估方法可确保最终指标的得分与专业医疗诊断相一致。使用五种深度学习算法的头部成像结果证实了所提出度量的显着优势,验证了其在为医学电磁成像中的各种算法提供客观评估方面的有效性。这一客观指标将指导未来算法的发展,以确保对其异常检测和诊断能力的可靠评估。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrated Boundary-Overlap-Size Metric for Local Assessment of Deep Learning Methods in Medical Microwave Imaging
Deep learning has been a game-changer in enhancing the speed and accuracy of medical microwave imaging in detecting abnormal lesions. Nonetheless, the challenge lies in establishing a universal objective metric to assess the reliability of these methods. Current evaluation practices often rely on a single geometric metric, which presents inherent constraints. Consequently, the evaluations of results generated by deep learning methods may not always reflect clinicians’ insights and judgments. To overcome this, a local assessment metric incorporating the following three geometric dimensions is proposed: the overlap between the detected anomaly and the actual lesion, the proximity of their boundaries, and the proportionality of the lesion sizes determined by the algorithm versus the actual lesion. This approach to evaluation ensures that the resulting metric's score is in line with professional medical diagnostics. The presented results on head imaging using five deep learning algorithms confirm the significant advantages of the proposed metric, validating its effectiveness in providing objective evaluation of various algorithms in medical electromagnetic imaging. This objective metric is poised to guide future algorithm development to ensure a reliable assessment of their capability in abnormality detection and diagnosis.
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来源期刊
CiteScore
5.80
自引率
9.40%
发文量
58
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