AI Article Synopsis

  • * The rise of machine algorithms, especially in deep learning and machine learning, offers new ways to analyze clinical data and improve prognostic assessments in liver cancer patients through identifying patterns.
  • * Key challenges remain in this field, such as integrating diverse clinical data, addressing ethical concerns, and ensuring the transparency of how these algorithms make decisions, which this paper aims to address through a systematic review.

Article Abstract

The treatment for liver cancer has transitioned from traditional surgical resection to interventional therapies, which have become increasingly popular among patients due to their minimally invasive nature and significant local efficacy. However, with advancements in treatment technologies, accurately assessing patient response and predicting long-term survival has become a crucial research topic. Over the past decade, machine algorithms have made remarkable progress in the medical field, particularly in hepatology and prognosis studies of hepatocellular carcinoma (HCC). Machine algorithms, including deep learning and machine learning, can identify prognostic patterns and trends by analyzing vast amounts of clinical data. Despite significant advancements, several issues remain unresolved in the prognosis prediction of liver cancer using machine algorithms. Key challenges and main controversies include effectively integrating multi-source clinical data to improve prediction accuracy, addressing data privacy and ethical concerns, and enhancing the transparency and interpretability of machine algorithm decision-making processes. This paper aims to systematically review and analyze the current applications and potential of machine algorithms in predicting the prognosis of patients undergoing interventional therapy for liver cancer, providing theoretical and empirical support for future research and clinical practice.

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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11477842PMC
http://dx.doi.org/10.62347/BEAO1926DOI Listing

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