A comprehensive review of computational diagnostic techniques for lymphedema.

IF 5 Q1 ENGINEERING, BIOMEDICAL Progress in biomedical engineering (Bristol, England) Pub Date : 2025-01-09 DOI:10.1088/2516-1091/ada85a
Jayasree K R, Vijaykumar D K, Vijayan Sugumaran, Rahul Krishnan Pathinarupothi
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Abstract

Lymphedema is localized swelling due to lymphatic system dysfunction, often affecting arms and legs due to fluid accumulation. It occurs in 20% to 94% of patients within 2 to 5 years after breast cancer treatment, with around 20% of women developing breast cancer-related lymphedema (BCRL). This condition involves the accumulation of protein-rich fluid in interstitial spaces, leading to symptoms like swelling, pain, and reduced mobility that significantly impact quality of life. The early diagnosis of lymphedema helps mitigate the risk of deterioration and prevent its progression to more severe stages. Healthcare providers can reduce risks through exercise prescriptions and self-manual lymphatic drainage techniques. Lymphedema diagnosis currently relies on physical examinations and limb volume measurements, but challenges arise from a lack of standardized criteria and difficulties in detecting early stages. Recent advancements in computational imaging and decision support systems have improved diagnostic accuracy through enhanced image reconstruction and real-time data analysis. The aim of this comprehensive review is to provide an in-depth overview of the research landscape in computational diagnostic techniques for lymphedema. The computational techniques primarily include imaging-based, electrical, and machine learning approaches, which utilize advanced algorithms and data analysis. These modalities were compared based on various parameters to choose the most suitable techniques for their applications. Lymphedema detection faces challenges like subtle symptoms and inconsistent diagnostics. The research identifies Bioimpedance Spectroscopy (BIS), Kinect sensor and Machine Learning integration as the promising modalities for early lymphedema detection. BIS can effectively identify lymphedema as early as four months post-surgery with sensitivity of 44.1% and specificity of 95.4% in diagnosing lymphedema whereas in Machine learning, Artificial Neural Network (ANN) achieved an impressive average cross-validation accuracy of 93.75%, with sensitivity at 95.65% and specificity at 91.03%. Machine learning and imaging can be integrated into clinical practice to enhance diagnostic accuracy and accessibility.

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淋巴水肿计算诊断技术的综合综述。
淋巴水肿是由于淋巴系统功能障碍引起的局部肿胀,通常由于液体积聚而影响手臂和腿部。在乳腺癌治疗后的2至5年内,20%至94%的患者会出现这种情况,其中约20%的女性会出现乳腺癌相关淋巴水肿(BCRL)。这种情况涉及到富含蛋白质的液体在间隙中积聚,导致肿胀、疼痛和活动能力降低等症状,严重影响生活质量。淋巴水肿的早期诊断有助于减轻恶化的风险,并防止其发展到更严重的阶段。医疗保健提供者可以通过运动处方和自我手动淋巴引流技术来降低风险。淋巴水肿的诊断目前依赖于身体检查和肢体体积测量,但由于缺乏标准化标准和早期发现困难而产生挑战。计算机成像和决策支持系统的最新进展通过增强图像重建和实时数据分析提高了诊断准确性。这篇综合综述的目的是对淋巴水肿计算诊断技术的研究前景进行深入的概述。计算技术主要包括基于成像、电子和机器学习的方法,这些方法利用了先进的算法和数据分析。根据各种参数对这些模式进行比较,以选择最适合其应用的技术。淋巴水肿的检测面临着诸如细微症状和不一致的诊断等挑战。该研究确定了生物阻抗光谱(BIS)、Kinect传感器和机器学习集成作为早期淋巴水肿检测的有前途的模式。BIS早在术后4个月就能有效识别淋巴水肿,诊断淋巴水肿的敏感性为44.1%,特异性为95.4%,而在机器学习中,人工神经网络(ANN)的平均交叉验证准确率为93.75%,敏感性为95.65%,特异性为91.03%。机器学习和成像可以整合到临床实践中,以提高诊断的准确性和可及性。
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