人工智能在皮肤伤口评估和愈合时间预测方面的应用进展。

IF 1.7 4区 医学 Q3 MEDICINE, RESEARCH & EXPERIMENTAL American journal of translational research Pub Date : 2024-07-15 eCollection Date: 2024-01-01 DOI:10.62347/MYHE3488
Ming-Yao Chen, Ming-Qi Cao, Tian-Ying Xu
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引用次数: 0

摘要

自 20 世纪 70 年代以来,人工智能(AI)在医疗领域发挥着越来越关键的作用,提高了疾病诊断和治疗的效率。在人口老龄化和慢性病激增的背景下,针对高风险、多病种患者和难愈合伤口的复杂手术日益增多。医护人员面临着同时为所有患者提供安全有效护理的挑战。皮肤伤口管理不善会增加感染和并发症的风险,阻碍伤口愈合,降低患者的生活质量。人工智能在彻底改变伤口护理和管理方面大有可为,从而提高了住院患者的治疗效果,使医护人员能够更有效地分配时间。本综述详细介绍了将人工智能应用于皮肤伤口评估和愈合时间预测方面的进展。它强调使用各种算法来自动化和简化慢性伤口愈合阶段的测量、分类和识别,并预测伤口愈合时间。此外,综述还讨论了现有的局限性,并探讨了未来的发展方向。
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Progress in the application of artificial intelligence in skin wound assessment and prediction of healing time.

Since the 1970s, artificial intelligence (AI) has played an increasingly pivotal role in the medical field, enhancing the efficiency of disease diagnosis and treatment. Amidst an aging population and the proliferation of chronic disease, the prevalence of complex surgeries for high-risk multimorbid patients and hard-to-heal wounds has escalated. Healthcare professionals face the challenge of delivering safe and effective care to all patients concurrently. Inadequate management of skin wounds exacerbates the risk of infection and complications, which can obstruct the healing process and diminish patients' quality of life. AI shows substantial promise in revolutionizing wound care and management, thus enhancing the treatment of hospitalized patients and enabling healthcare workers to allocate their time more effectively. This review details the advancements in applying AI for skin wound assessment and the prediction of healing timelines. It emphasizes the use of diverse algorithms to automate and streamline the measurement, classification, and identification of chronic wound healing stages, and to predict wound healing times. Moreover, the review addresses existing limitations and explores future directions.

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来源期刊
American journal of translational research
American journal of translational research ONCOLOGY-MEDICINE, RESEARCH & EXPERIMENTAL
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