HepatoConsult: a knowledge-based second opinion and documentation system.

Abstract:

:HepatoConsult is a publicly available knowledge-based second opinion and documentation system aiding in the diagnosis of liver diseases. The positive results of a prospective diagnostic evaluation study encouraged its use in clinical routine, although the available hardware infrastructure was not optimal. The comments of the physicians who used the system confirmed the results of the study and showed that the time for data entering is acceptable and the implicit standardization of terminology and documentation is welcome. Suggestions for improvement included the interface to enter data more easily, the scope to be usable for more patients and the additional capability to generate medical reports from the data.

journal_name

Artif Intell Med

authors

Buscher HP,Engler Ch,Führer A,Kirschke S,Puppe F

doi

10.1016/s0933-3657(01)00104-x

subject

Has Abstract

pub_date

2002-03-01 00:00:00

pages

205-16

issue

3

eissn

0933-3657

issn

1873-2860

pii

S093336570100104X

journal_volume

24

pub_type

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