Digital Twin of the Female Pelvic Floor.

妇产科期刊(英文) Pub Date : 2024-11-01 Epub Date: 2024-11-06 DOI:10.4236/ojog.2024.1411138
Vladimir Egorov
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引用次数: 0

Abstract

Digital twin technology, originally developed for intricate physical systems, holds great potential in women's healthcare, particularly in the management of pelvic floor disorders. This paper delves into the development of a digital twin specifically for the female pelvic floor, which can amalgamate various data sources such as imaging, biomechanical assessments, and patient-reported outcomes to offer personalized diagnostic and therapeutic insights. Through the utilization of 3D modeling and machine learning, the digital twin may facilitate precise visualization, prediction, and individualized treatment planning. Nevertheless, it is crucial to address the ethical and practical challenges related to data privacy and ensuring fair access. As this technology progresses, it has the potential to revolutionize gynecological and obstetric care by enhancing diagnostics, customizing treatments, and increasing patient involvement.

女性盆底的数字双胞胎
数字孪生技术最初是为复杂的物理系统而开发的,在女性医疗保健领域,尤其是盆底疾病的管理方面具有巨大的潜力。本文深入探讨了专为女性盆底开发的数字孪生技术,该技术可以整合各种数据源,如成像、生物力学评估和患者报告结果,从而提供个性化的诊断和治疗见解。通过利用三维建模和机器学习,数字孪生可以促进精确的可视化、预测和个性化治疗规划。然而,解决与数据隐私和确保公平访问相关的伦理和实际挑战至关重要。随着这项技术的发展,它有可能通过加强诊断、定制治疗和增加患者参与来彻底改变妇产科护理。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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