系统专家采用天真的贝斯方法对牙齿疾病进行诊断

Yuliyana Yuliyana, Anita Sindar Sinaga
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引用次数: 20

摘要

摘要牙齿疾病通常被认为是微不足道但非常令人不安的疾病。通常,当牙齿出现问题时,牙齿很容易受到食物和天气的影响。这项调查获得了牙科患者去医院或专科医生的最低意愿。一个专家系统介绍了牙科诊断的实现。疾病可以通过电脑(专家)的指令来治疗牙痛。专家作为知识库的来源,代表着一台诊断疾病的计算机。根据牙医的说法,有7种类型的疾病:牙齿侵蚀、牙龈炎、牙髓炎、牙齿脓肿、牙周炎、龋齿、口臭和罕见牙综合征。有37种症状(根据标准编码)。在朴素贝叶斯中,分类使用概率和统计方法。Naive Bayes计算基于疾病数据和症状数据以及数据、假设和概率变量。这项研究的结果是诊断出牙齿疾病的概率最高。牙齿出现症状的概率是基于牙医或牙医的经验。根据已知病例测试的数据,口臭是另一种疾病中最高的概率为0.29646,即29.64%。关键词:牙科疾病,诊断,使用朴素贝叶斯方法诊断牙科疾病的专家系统。通常被认为微不足道但非常令人不安的疾病是牙科疾病。一般来说,当牙齿出现问题时,牙齿容易受到食物和天气的影响。从调查中可以看出,牙痛患者很少愿意去医院或专家那里。一个专家系统介绍了牙科疾病诊断的实施。病人可以在电脑专家的指导下治疗牙痛。专家作为知识库的数据来源,以诊断疾病的计算机为代表。根据牙科专家的说法,有七种类型的疾病:牙齿侵蚀、高Vitis、牙髓病、牙脓肿、牙周炎、龋齿、口臭和裂牙综合征。有37种症状(根据标准编码)。在朴素贝叶斯中,分类使用概率和统计方法。朴素贝叶斯计算是基于疾病数据和症状数据,包括变量数据、假设和概率。这项研究的结果是对牙齿疾病的诊断具有最高的概率值。牙科疾病症状的概率值是基于专家或牙医的经验获得的。根据病例测试的数据可知,口臭的概率是其他疾病中最高的,即0.29646或29.64%。关键词:口腔疾病,诊断,专家系统,概率,朴素贝叶斯
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Sistem Pakar Diagnosa Penyakit Gigi Menggunakan Metode Naive Bayes
Abstrak Penyakit yang sering dianggap sepele namun sangat mengganggu adalah penyakit gigi. Umumnya gigi rentan terhadap makanan dan cuaca bila gigi mengalami permasalahan. Dari survey diperoleh sangat minim keinginan penderita sakit gigi berobat ke rumah sakit atau dokter spesialis. Sebuah sistem pakar memperkenalkan implementasi diagnosa penyakit gigi. Sipenderita dapat mengobati sakit gigi dengan arahan dari kommputer (pakar). Pakar sebagai sumber data basis pengetahuan diwakilkan komputer mendiagnosa penyakit. Menurut pakar gigi ada 7 jenis penyakit: Erosi Gigi, Ginggi-vitis, Pulpi-tis, Abses Gigi, Periodo-ntitis, Karies Gigi, Hali-tosis, dan Sindrom Gigi Retak. dengan 37 gejala (dikodekan sesuai kriteria). Dalam Naive Bayes, pengklasifikasian menggunakan metode probabilitas dan statistik. Perhitungan Naive Bayes berdasarkan data penyakit dan data gejala dengan variable Data, Hipotesa dan Probabilitas. Hasil dari penelitian ini adalah sebuah diagnosa terhadap penyakit gigi dengan hasil nilai probabilitas tertinggi. Nilai probabilitas dari gejala penyakit gigi diperoleh berdasarkan pengalaman seorang pakar atau dokter gigi. Dari data yang diuji sesuai kasus diketahui probabilitas Penyakit Halitosis adalah yang tertinggi dari penyakit lain yaitu 0.29646 atau 29.64%. Kata kunci : Penyakit Gigi, Diagnosa, Sistem Pakar, Probabilitas, Naive Bayes Abstract [Expert System for Diagnosing Dental Disease Using Naive Bayes Method] Diseases that are often considered trivial but very disturbing are dental diseases. Generally, teeth are susceptible to food and weather when teeth experience problems. From the survey, it was obtained that there was very little desire for dental pain sufferers to go to hospitals or specialists. An expert system introduces the implementation of dental disease diagnoses. Patients can treat toothache with direction from a computer expert. Experts as knowledge base data sources are represented by computers diagnosing disease. According to dental experts, there are seven types of diseases: Dental Erosion, High-Vitis, Pulpitis, Dental Abscess, Periodonitisitis, Dental Caries, Halitosis, and Cracked Tooth Syndrome. with 37 symptoms (encoded according to criteria). In Naive Bayes, the classification uses probability and statistical methods. Naive Bayes calculations are based on disease data and symptom data with variable Data, Hypothesis and Probability. The results of this study are a diagnosis of dental disease with the highest probability value. The probability value of symptoms of dental disease is obtained based on the experience of an expert or dentist. From the data tested according to the case, it is known that the probability of Halitosis is the highest of other diseases, namely 0.29646 or 29.64%. Keywords : Dental Disease, Diagnosis, Expert System, Probability, Naive Bayes
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