人工智能在颌面部疾病诊断中的应用

IF 0.3 Q3 MEDICINE, GENERAL & INTERNAL European Journal of Therapeutics Pub Date : 2023-08-28 DOI:10.58600/eurjther1806
M. Bolbolian, M. Tofangchiha
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These algorithms demonstrated excellent reliability in distinguishing periapical cysts from keratocystic odontogenic tumors when manually created parameters [4] were used in their development. When these approaches, such as convolutional neural network (CNN), were employed to examine the cytological pictures gathered, they revealed an inadequate performance error in identifying malignant lesions of the mouth. Although these results are hopeful, existing artificial intelligence algorithms for diagnosing oral and maxillofacial lesions predominantly rely only on a single kind of data, cytopathological reports. Using models that include the patient's medical history is critical to do a very exact analysis [5]. ‎‎‎‎‎‎‎\nDeep learning (DL) and CNN have made significant contributions to artificial intelligence in caries and endodontics because of their capacity to automate waste categorization and classification. To classify radiographs or photographs, several criteria, including comparable qualities, are used to separate them into many discontinuous sections [6]. This process results in predictable data being generated from unpredictable data. Using understanding network (U-Net), the DL categorizes the cone beam computed tomography (CBCT) vertices into \"lesions,\" \"tooth structures,\" \"bones,\" \"restorative materials,\" and \"backgrounds,\" with the findings being comparable to the diagnosis of total lesions. Apical is a company that supplies doctors [7]. Distal caries lesions may also be detected by DL using imaging data [8]. ‎\nThe clinical signs and symptoms that the patient exhibits are crucial in diagnosing temporomandibular disorders (TMD). It is a method for converting spoken language into an ordered computer language known as speech processing. Considering the sorts of words used in the patient's speech and the size of the patient's mouth, it was found that constructing a software model based on this was more successful than using the actual model [9]. A full degree of agreement between artificial intelligence and the physician is shown in AI's identification of condyle morphology. ‎\nReviewing these articles was instructive since it provided us with an opportunity to observe the diverse range of approaches that have been created and assessed across a diverse range of images and experiences. Given that no one has gone so far as to determine how they will be integrated into a clinical workflow or, more importantly, whether and how they will impact radiologists' diagnostic accuracy and efficiency (and, consequently, patient outcomes), it is difficult to predict which ones will be implemented in a clinical environment. 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引用次数: 0

摘要

最近,人工智能在医学中的应用成为研究的焦点[1,2]。医疗保健行业,尤其是放射学,在临床实践中使用卷积神经网络时,可能会领先一两步。对日常生活中使用放射照相的调查数量继续增加,已经影响到病人护理问题的可获得方法的数量也在增加,两者都在增加。此外,还有一个专门用于使用人工智能(AI)的医学成像的区域。此外,一个专门的领域已经出现,专注于人工智能和医学成像之间的协同作用,特别是在诊断颌面部疾病的背景下。诊断是根据患者的病史、相关测试和其他易感变量做出的,这些都是已知的人类记忆保留的危险因素。在使用初级卫生数据时,来自人类专业人员的人工智能比人类专家的表现要好得多[3]。一项研究表明,将人工智能与临床诊断相结合,可以显著提高诊断的准确性和效率。最近,使用机器学习技术诊断了几种疾病,包括肿瘤、癌症和转移等。当人工创建参数[4]时,这些算法在区分尖周囊肿和角化囊性牙源性肿瘤方面表现出极好的可靠性。当使用卷积神经网络(CNN)等方法来检查收集到的细胞学图像时,它们发现在识别口腔恶性病变方面存在不充分的性能误差。尽管这些结果是有希望的,但现有的用于诊断口腔和颌面病变的人工智能算法主要只依赖于一种类型的数据,即细胞病理学报告。使用包含患者病史的模型对于进行非常精确的分析至关重要[5]。深度学习(DL)和CNN对龋齿和牙髓学中的人工智能做出了重大贡献,因为它们能够自动进行废物分类和分类。为了对x光片或照片进行分类,使用了一些标准,包括可比较的质量,将它们分成许多不连续的部分[6]。这个过程导致从不可预测的数据生成可预测的数据。使用理解网络(U-Net), DL将锥束计算机断层扫描(CBCT)顶点分类为“病变”、“牙齿结构”、“骨骼”、“修复材料”和“背景”,其结果与总体病变的诊断相当。Apical是一家供应医生的公司[7]。远端龋齿病变也可通过DL利用影像学资料进行检测[8]。患者表现出的临床体征和症状对于诊断颞下颌紊乱(TMD)至关重要。它是一种将口语转换成有序的计算机语言的方法,称为语音处理。考虑到患者言语中使用的词语种类和患者口腔的大小,我们发现基于此构建软件模型比使用实际模型更成功[9]。人工智能和医生之间的完全一致体现在人工智能对髁状突形态的识别上。回顾这些文章是有益的,因为它为我们提供了一个机会来观察各种各样的方法,这些方法是在各种各样的图像和经验中被创造和评估的。考虑到目前还没有人能够确定它们将如何整合到临床工作流程中,或者更重要的是,它们是否以及如何影响放射科医生的诊断准确性和效率(从而影响患者的治疗结果),因此很难预测哪些将在临床环境中实施。正如研究结果所强调的那样,为了充分利用人工智能在改变颌面部疾病诊断领域的全部潜力,持续的研究努力是必不可少的。最好的问候,
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Artificial Intelligence in the Diagnosis of Maxillofacial Disorders
Dear Editor, Recently, studies and research have focused on the use of artificial intelligence in medical science [1,2]. It's probable that the healthcare industry, especially radiology, is a step or two ahead of the curve when using convolutional neural networks in clinical practice. The number of investigations into the use of radiography in daily life continues to grow, as does the number of accessible methods that have already impacted the issue of patient care, both of which are on the rise. In addition, there is a whole area devoted to Medical Imaging using artificial intelligence (AI). Additionally, a dedicated domain has emerged, focusing on the synergy between artificial intelligence and Medical Imaging, particularly in the context of diagnosing Maxillofacial Disorders.‎‎‎‎ The diagnosis is made based on the patient's medical history, linked testing, and other susceptible variables, all known to be risk factors for human memory retention. Artificial intelligence from human professionals performs much better than human specialists when using primary health data [3]. A study indicated that by using artificial intelligence in conjunction with clinical diagnostics, the accuracy and efficiency of diagnosis might be improved significantly. ‎‎‎‎‎‎ Recently, several illnesses have been diagnosed using machine learning techniques, including tumors, cancer, and metastases, among others. These algorithms demonstrated excellent reliability in distinguishing periapical cysts from keratocystic odontogenic tumors when manually created parameters [4] were used in their development. When these approaches, such as convolutional neural network (CNN), were employed to examine the cytological pictures gathered, they revealed an inadequate performance error in identifying malignant lesions of the mouth. Although these results are hopeful, existing artificial intelligence algorithms for diagnosing oral and maxillofacial lesions predominantly rely only on a single kind of data, cytopathological reports. Using models that include the patient's medical history is critical to do a very exact analysis [5]. ‎‎‎‎‎‎‎ Deep learning (DL) and CNN have made significant contributions to artificial intelligence in caries and endodontics because of their capacity to automate waste categorization and classification. To classify radiographs or photographs, several criteria, including comparable qualities, are used to separate them into many discontinuous sections [6]. This process results in predictable data being generated from unpredictable data. Using understanding network (U-Net), the DL categorizes the cone beam computed tomography (CBCT) vertices into "lesions," "tooth structures," "bones," "restorative materials," and "backgrounds," with the findings being comparable to the diagnosis of total lesions. Apical is a company that supplies doctors [7]. Distal caries lesions may also be detected by DL using imaging data [8]. ‎ The clinical signs and symptoms that the patient exhibits are crucial in diagnosing temporomandibular disorders (TMD). It is a method for converting spoken language into an ordered computer language known as speech processing. Considering the sorts of words used in the patient's speech and the size of the patient's mouth, it was found that constructing a software model based on this was more successful than using the actual model [9]. A full degree of agreement between artificial intelligence and the physician is shown in AI's identification of condyle morphology. ‎ Reviewing these articles was instructive since it provided us with an opportunity to observe the diverse range of approaches that have been created and assessed across a diverse range of images and experiences. Given that no one has gone so far as to determine how they will be integrated into a clinical workflow or, more importantly, whether and how they will impact radiologists' diagnostic accuracy and efficiency (and, consequently, patient outcomes), it is difficult to predict which ones will be implemented in a clinical environment. As underscored by the study findings, continued research endeavors are imperative to harness the full potential of artificial intelligence in transforming the landscape of diagnosing Maxillofacial Disorders. Best regards,
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European Journal of Therapeutics
European Journal of Therapeutics MEDICINE, GENERAL & INTERNAL-
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