Deep learning in ovarian cancer diagnosis: a comprehensive review of various imaging modalities.

Polish journal of radiology Pub Date : 2024-01-22 eCollection Date: 2024-01-01 DOI:10.5114/pjr.2024.134817
Mohammad Hossein Sadeghi, Sedigheh Sina, Hamid Omidi, Amir Hossein Farshchitabrizi, Mehrosadat Alavi
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Abstract

Ovarian cancer poses a major worldwide health issue, marked by high death rates and a deficiency in reliable diagnostic methods. The precise and prompt detection of ovarian cancer holds great importance in advancing patient outcomes and determining suitable treatment plans. Medical imaging techniques are vital in diagnosing ovarian cancer, but achieving accurate diagnoses remains challenging. Deep learning (DL), particularly convolutional neural networks (CNNs), has emerged as a promising solution to improve the accuracy of ovarian cancer detection. This systematic review explores the role of DL in improving the diagnostic accuracy for ovarian cancer. The methodology involved the establishment of research questions, inclusion and exclusion criteria, and a comprehensive search strategy across relevant databases. The selected studies focused on DL techniques applied to ovarian cancer diagnosis using medical imaging modalities, as well as tumour differentiation and radiomics. Data extraction, analysis, and synthesis were performed to summarize the characteristics and findings of the selected studies. The review emphasizes the potential of DL in enhancing the diagnosis of ovarian cancer by accelerating the diagnostic process and offering more precise and efficient solutions. DL models have demonstrated their effectiveness in categorizing ovarian tissues and achieving comparable diagnostic performance to that of experienced radiologists. The integration of DL into ovarian cancer diagnosis holds the promise of improving patient outcomes, refining treatment approaches, and supporting well-informed decision-making. Nevertheless, additional research and validation are necessary to ensure the dependability and applicability of DL models in everyday clinical settings.

深度学习在卵巢癌诊断中的应用:各种成像模式的综合评述。
卵巢癌是一个重大的世界性健康问题,其特点是高死亡率和缺乏可靠的诊断方法。准确、及时地检测卵巢癌对提高患者预后和确定合适的治疗方案具有重要意义。医学成像技术对诊断卵巢癌至关重要,但实现准确诊断仍具有挑战性。深度学习(DL),尤其是卷积神经网络(CNN),已成为提高卵巢癌检测准确性的一种有前途的解决方案。本系统综述探讨了深度学习在提高卵巢癌诊断准确性方面的作用。研究方法包括确定研究问题、纳入和排除标准,以及在相关数据库中进行全面搜索的策略。所选研究侧重于使用医学成像模式以及肿瘤分化和放射组学诊断卵巢癌的 DL 技术。通过数据提取、分析和综合,总结了所选研究的特点和发现。综述强调了 DL 在通过加速诊断过程和提供更精确、更高效的解决方案来加强卵巢癌诊断方面的潜力。DL 模型已证明能有效地对卵巢组织进行分类,其诊断效果可与经验丰富的放射科医生媲美。将 DL 纳入卵巢癌诊断有望改善患者预后、改进治疗方法并支持知情决策。然而,要确保 DL 模型在日常临床环境中的可靠性和适用性,还需要更多的研究和验证。
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