Licata G
Department of Clinical Neurosciences, University of Palermo, Via Catania 166, I-90141, Palermo, Italy.
Intern Emerg Med. 2007 Jun;2(2):100-6. doi: 10.1007/s11739-007-0051-9. Epub 2007 Jul 18.
In this study I have compared classic and fuzzy logic and their usefulness in clinical diagnosis. The theory of probability is often considered a device to protect the classical two-valued logic from the evidence of its inadequacy to understand and show the complexity of world [1]. This can be true, but it is not possible to discard the theory of probability. I will argue that the problems and the application fields of the theory of probability are very different from those of fuzzy logic. After the introduction on the theoretical bases of fuzzy approach to logic, I have reported some diagnostic argumentations employing fuzzy logic. The state of normality and the state of disease often fight their battle on scalar quantities of biological values and it is not hard to establish a correspondence between the biological values and the percent values of fuzzy logic. Accordingly, I have suggested some applications of fuzzy logic in clinical diagnosis and in particular I have utilised a fuzzy curve to recognise subjects with diabetes mellitus, renal failure and liver disease. The comparison between classic and fuzzy logic findings seems to indicate that fuzzy logic is more adequate to study the development of biological events. In fact, fuzzy logic is useful when we have a lot of pieces of information and when we dispose to scalar quantities. In conclusion, increasingly the development of technology offers new instruments to measure pathological parameters through scalar quantities, thus it is reasonable to think that in the future fuzzy logic will be employed more in clinical diagnosis.
在本研究中,我比较了经典逻辑和模糊逻辑及其在临床诊断中的实用性。概率理论常被视为一种工具,用于保护经典二值逻辑,使其免受自身在理解和展现世界复杂性方面不足的证据的影响[1]。这可能是事实,但抛弃概率理论是不可能的。我将论证,概率理论的问题和应用领域与模糊逻辑的截然不同。在介绍了模糊逻辑方法的理论基础后,我报告了一些运用模糊逻辑的诊断论证。正常状态和疾病状态常常在生物值的标量上展开较量,而且在生物值和模糊逻辑的百分比值之间建立对应关系并不困难。因此,我提出了模糊逻辑在临床诊断中的一些应用,特别是利用模糊曲线来识别患有糖尿病、肾衰竭和肝病的患者。经典逻辑和模糊逻辑结果的比较似乎表明,模糊逻辑更适合研究生物事件的发展。事实上,当我们有大量信息且处理标量时,模糊逻辑是有用的。总之,技术的发展越来越多地提供了通过标量来测量病理参数的新工具,因此有理由认为未来模糊逻辑将在临床诊断中得到更多应用。