Challenges and Promotional Strategies for the Clinical Translation of Fractal Theory in Medical Diagnosis
DOI:
https://doi.org/10.61173/0df8rm21Keywords:
Fractal Theory, Medical Diagnosis, Multi-Modal Fusion, Artificial IntelligenceAbstract
Fractal theory, by quantifying self-similar features, provides a novel and powerful analytical framework characterized by high sensitivity and specificity for the analysis of complex images and physiological signals in medical diagnosis. It has been verified that its diagnostic efficacy is superior to traditional methods in the early image discrimination of lung cancer and the electrocardiogram recognition of arrhythmia. However, its broader translation into clinical practice is hindered by several challenges, including the absence of standardized data acquisition protocols, limitations in algorithmic robustness and generalizability, low levels of clinical acceptance, and barriers to effective interdisciplinary collaboration. To address these impediments, this research proposes a multifaceted strategy: The research proposes to unify the norms for medical data collection, optimize the fractal algorithm, and deeply integrate AI and big data, carry out multi-center clinical validation, develop and deploy user-friendly visual diagnostic software to facilitate clinical adoption, and cultivate interdisciplinary talents who can bridge the gap between theoretical mathematics and clinical medicine. It also calls on the government to increase policy and financial support to promote the routine application of fractal diagnosis technology in clinical practice and improve the levels of early screening, precise diagnosis, and individualized treatment of diseases.