Xiao Z H, Xiao Y H, Pei J H
Biomedical Laboratory, Chongqing University, Chongqing, 630044 China.
Medinfo. 1995;8 Pt 2:956.
One of the problems in the development of the medical knowledge systems is the limitations of the system's knowledge. It is a common expectation to increase the number of diseases contained in a system. Using a high density knowledge representation method designed by us, we have developed the Enormous Knowledge Base of Disease Diagnosis Criteria (EKBDDC). It contains diagnostic criteria of 1,001 diagnostic entities and describes nearly 4,000 items of diagnostic indicators. It is the core of a huge medical project--the Electronic-Brain Medical Erudite (EBME). This enormous knowledge base was implemented initially on a low-cost popular microcomputer, which can aid in the prompting of typical disease and in teaching of diagnosis. The knowledge base is easy to expand. One of the main goals of EKBDDC is to increase the number of diseases included in it as far as possible using a low-cost computer with a comparatively small storage capacity. For this, we have designed a high density knowledge representation method. Criteria of various diagnostic entities are respectively stored in different records of the knowledge base. Each diagnostic entity corresponds to a diagnostic criterion data set; each data set consists of some diagnostic criterion data values (Table 1); each data is composed of two parts: integer and decimal; the integral part is the coding number of the given diagnostic information, and the decimal part is the diagnostic value of this information to the disease indicated by corresponding record number. For example, 75.02: the integer 75 is the coding number of "hemorrhagic skin rash"; the decimal 0.02 is the diagnostic value of this manifestation for diagnosing allergic purpura. TABULAR DATA, SEE PUBLISHED ABSTRACT. The algebraic sum method, a special form of the weighted summation, is adopted as mathematical model. In EKBDDC, the diagnostic values, which represent the significance of the disease manifestations for diagnosing corresponding diseases, were determined empirically. It is of a great economical, practical, and technical significance to realize enormous knowledge bases of disease diagnosis criteria on a low-cost popular microcomputer. This is beneficial for the developing countries to popularize medical informatics. To create the enormous international computer-aided diagnosis system, one may jointly develop the unified modules of disease diagnosis criteria used to "inlay" relevant computer-aided diagnosis systems. It is just like assembling a house using prefabricated panels.
医学知识系统发展过程中的问题之一是系统知识的局限性。增加系统中包含的疾病数量是一个普遍的期望。我们使用自行设计的高密度知识表示方法,开发了疾病诊断标准巨型知识库(EKBDDC)。它包含1001个诊断实体的诊断标准,描述了近4000项诊断指标。它是一个大型医学项目——电子脑医学博识(EBME)的核心。这个巨型知识库最初在低成本的通用微型计算机上实现,可辅助典型疾病的提示和诊断教学。该知识库易于扩展。EKBDDC的主要目标之一是使用具有相对较小存储容量的低成本计算机尽可能增加其中包含的疾病数量。为此,我们设计了一种高密度知识表示方法。各种诊断实体的标准分别存储在知识库的不同记录中。每个诊断实体对应一个诊断标准数据集;每个数据集由一些诊断标准数据值组成(表1);每个数据由两部分组成:整数和小数;整数部分是给定诊断信息的编码号,小数部分是该信息对相应记录号所指示疾病的诊断值。例如,75.02:整数75是“出血性皮疹”的编码号;小数0.02是该表现对诊断过敏性紫癜的诊断值。表格数据见已发表摘要。采用加权求和的特殊形式代数和法作为数学模型。在EKBDDC中,代表疾病表现对诊断相应疾病重要性的诊断值是根据经验确定的。在低成本的通用微型计算机上实现疾病诊断标准的巨型知识库具有重大的经济、实用和技术意义。这有利于发展中国家普及医学信息学。为创建巨型国际计算机辅助诊断系统,可以联合开发用于“镶嵌”相关计算机辅助诊断系统的疾病诊断标准统一模块。这就像用预制板组装房屋一样。