机器学习在结直肠癌中的应用:从早期检测到个性化治疗。

IF 1.4
Shaik Yasmin Tabasum, C Valli Nachiyar, Swetha Sunkar
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引用次数: 0

摘要

结直肠癌(CRC)是一个重大的健康挑战在世界范围内,发病率越来越多地报道在年轻人中。因此,机器学习正在彻底改变CRC的护理,包括在早期检测、分期、复发预测和个体化治疗方面取得进展。分析技术包括支持向量机、随机森林和神经网络,这些技术允许对数据集进行复杂的分析,包括遗传谱和成像数据,从而提高诊断准确性和治疗结果。机器学习驱动的个性化治疗策略使临床医生能够为个体患者量身定制治疗方法,优化疗效,同时减少副作用。然而,将机器学习(ML)集成到CRC管理中面临着数据质量、验证和顺利适应临床工作流程等挑战。通过多机构合作和强大的验证框架来克服这些障碍对于释放机器学习的全部潜力至关重要。研究的进步将使结直肠癌护理的转变能够提供更准确的诊断和有针对性的治疗,最终改变患者的结果。本综述探讨了机器学习(ML)在结直肠癌(CRC)研究和护理中的变革性影响。通过整合多组学、放射组学和临床数据,ML模型优于传统的诊断和预后方法,可以实现精确的风险预测、个性化治疗和早期复发检测。监督学习、神经网络和深度学习的融合产生了可操作的见解,可以改善患者的治疗效果,并解决CRC管理中未满足的需求。该综述还讨论了数据标准化、伦理和临床工作流程集成等挑战的解决方案,为现实世界的ML采用提供了路线图。这项工作强调了计算进步和肿瘤学之间的协同作用,为结直肠癌的治疗提供了一个前瞻性的框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine learning applications in colorectal cancer: from early detection to personalized treatment.

Colorectal cancer (CRC) is a significant health challenge in the world, with incidence being increasingly reported among the young population. Machine learning, therefore, is revolutionizing care in CRC, including providing advancements in early detection, staging, recurrence prediction, and individualized medicine. Techniques for analysis include support vector machines, random forests, and neural networks, which allow complex analyses of datasets, including genetic profiles and imaging data, with an improvement in diagnostic accuracy and treatment outcomes. Machine learning-driven personalized treatment strategies empower clinicians to tailor therapies to individual patients, optimizing efficacy while reducing side effects. However, integration of Machine learning (ML) in CRC management faces challenges like data quality, validation, and smooth adaptation into clinical workflow. Overcoming these barriers through multi-institutional collaboration and strong validation frameworks will be essential to unlock the full potential of ML. Advancement in research will enable the transformation of CRC care to provide more accurate diagnoses and targeted treatments, ultimately changing patient outcomes. Insight box This review examines the transformative impact of machine learning (ML) in colorectal cancer (CRC) research and care. By integrating multi-omics, radiomics, and clinical data, ML models outperform traditional diagnostic and prognostic methods, enabling precise risk prediction, personalized treatment, and early recurrence detection. The amalgamation of supervised learning, neural networks, and deep learning yields actionable insights that improve patient outcomes and address unmet needs in CRC management. The review also discusses solutions to challenges such as data standardization, ethics, and clinical workflow integration, offering a roadmap for real-world ML adoption. This work highlights the synergy between computational advances and oncology, providing a forward-thinking framework for CRC care.

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