Title: Real Time Clinical Decision Support System
1Real Time Clinical Decision Support System
2Challenge of Modern Clinical Medicine
- Dilemma
- Patients increase
- Clinical Time decrease
- Quality of Health Care debase
- Requirement
- Patient comfort
- Clinical Time efficiency
- Quality of Health Care improvement
- Ethics
- Patient Right and Privacy
3Strategy
- RTCDSS Real Time Clinical Decision Support
System - QOL Quality of Life
- Infometrix Information Psychometrics? Online
Measurement for QOL - CDW Clinical Data Warehouse
- OLAP Online Analytical Process
- CDSS Clinical Decision Support System
- Internet Web Services and Real-Time Technology
- Foundation
- EBM Evidence-based Medicine
- HISES Hospital Information System Expert
System
4Scope
- Operating Interface
- Accessible design of human-computer interface
- Patient- and Clinician-oriented interface
- Patient-to-Clinician (P2C) communication
- Flexible and Expandable modules
- Web-based auto data transportation
- Proposed Functionality
- Traceable clinical markers for chronic diseases
- Instantaneous Patient Clinical Record (PCR)
- Reliable Patient Reported Outcome (PRO)
- Quantitative medical informatics
- Analytical online diagram
5INTRODUCTION
6Clinical Treatment
- Routine treatment procedure
- Physicians take much time to study patients
clinical records (PCRs) prior to explain abstruse
clinical markers to patients in clinics. - For chronic and traceable diseases, they need to
refer patients quality of life (QOL) and their
patient-reported outcomes (PROs) for prescribing
the proper therapies. - Modern hospital information systems
- Information technology (IT) and Web-based
facility have become the major backbone of the
modern hospital information systems (HIS) - Traceable clinical markers for the chronic
diseases - Clinical decision support system (CDSS) with
patient- and clinician-oriented interface as well
as patient-to-clinician (P2C) communication.
7- Major cancer therapy
- Ability Find and destroy tumors
- Disability Bring numbers of side effect
- It implies that QOL is deeply impacted by
uncertainty and after-effect due to treatment of
oncology clinic. - Traps of clinical and health care
- Incorrect judgments when patients embarrass on
answering private questions or hiding actual
conditions - Inconvincible diagnosis by computer-based CDSS
(or HIS) on clinician performance and patient
outcome - HIS difficulty and possible solution
- Function-oriented system uneasy to create a
universal system for varied clinical requirements - Flexible platform available to build up
expandable components for specified clinical
purpose by customized rules
8Quality of Life
- Assessment of Quality of Life
- EORTC provides QOL questionnaires to highlight
physicians awareness of patients status and
greatly facilitate physician-patient
communication - Infometrics combines information and
psychometrics technology for measurement,
statistical modeling, informatics and practice,
in palliative care with computerized procedure by
interactive assessment system - Concept of instant QOLPROPCR
- Measurement and management of PROs Infometrics
technique can assist clinicians to more precisely
recognize actual response of patients and improve
the quality of care with instant process and real
time outcomes statistics. - Graphical diagrams clinicians thus can convince
patients by presenting PRO instantly with other
PCR.
9Needs of Clinical Practice
- Problems to improve quality of clinical
treatments - Clinicians may take several hours, or even a
couple of days, to review PCRs but only have a
few minutes to explain their opinions to patients - Patients typically find difficulty to understand
their condition since clinicians may only explain
the disease adequately using written descriptions - The CDSS is computerized, but it may not have
online capability in many clinics - Real-time analysis is not supported by many
commercial computational tools - Need clinical data tracking ? real-time decision
making - The flexible Web-based CDSS with online
evidence-based medicine (EBM) progress is a
growing trend in advanced clinical care
10Clinical Decision Support
- Enhanced CDSS
- Analytical tools assist clinicians in
estimating the relative pretreatment parameters
and for tracking the proper diagnostic guidelines
on visualized interfaces - Clinician-oriented interface improve accuracy
and efficiency of decision support - RTCDSS support interactive diagrammed interface
with real-time online analysis to efficiently
evaluate instant informatics and to make clinical
decisions - Expandability and Feasibility follow the model
to take chronic diseases with traceable markers - Clinical Guideline
- Work with medical evidences and recommend
appropriate treatments by graphical interface - Allow users to traverse the algorithm by
flowcharts in an interactive fashion due to
Web-interfaced process
11- Clinical Benefits
- Rapid knowledge acquisitions, shareable guideline
models, and robust information systems while
evaluating its impacts on outcomes - The electronic guidelines improve decision
quality and physician-patients interaction
significantly - Encountered Obstacles
- Management of workflow integration would be the
most difficult tasks ex, integrating a new
RTCDSS with the PROs, PCRs, CDSS, and interactive
guidelines into the legacy HIS. - The framework for interactive clinical guidelines
should consider readiness of clinicians for
practice, barriers to change as experienced by
clinicians, and the target level of interventions
12DEVELOPMENT OF RTCDSS INFRASTRCTURE
- Model-view-controller model
- Object relation mapping model
- Clinical data warehouse model
- Web services model
- Online analytical process model
- Asynchronous JavaScript XML-HttpRequest model
13Model-view-controller model
- Design patterns in software engineering
- First made by introducing 23 patterns related to
creational, structural and behavioral models - For software design to progress recurrent
elements (Gamma et al., 1994). - The model-view-controller (MVC) pattern
- Hybrids strategy, observer, and composite
patterns - Divides system responsibilities into the model,
the view, and the controller - Software framework with MVC paradigm
- Open-source framework such as Strut, Spring,
Hibernate for development. - Use polling for its input control to solve the
problems on consuming computation resources when
the user is not interacting with the interface
and avoid unnecessary performance loss.
14- MVC design patterns
- Model maintains program data and logic
- View provides a visual presentation of the
model - Controller processes user input and makes
modifications to the model - Modelized architecture
- Expandable and reusable components of the
Web-based platform - Efficient and flexible collaboration for (a)
instantaneous disease evaluation, (b) risk
analysis, and (c) treatment guidance - Web assessment for acquiring PROs from online
infometrics system and adapting PCRs with the
legacy HIS in hospital.
15Web-based MVC Modelized Architecture
16Web-based architecture with model, view,
controller components
174-Tier MVC-based RTCDSS for Clinics
18- Components of MVC-based RTCDSS for Clinics
- Four-Tier Components
- Presentation interactive guideline, real-time
diagram ? Browser Windows - Management privilege administration,
informatics management ? Application Server - Database data filtering ? clinical data
warehouse - Analysis data analysis tools adapting ? SAS,
SPSS, MATLAB - Three-Level Users
- Patients / Healthcare Staff ? Input data
- Clinicians / Decision Maker ? Decide data
- Engineers / Administrator ? Analyze data
19- Models disease evaluation, risk analysis,
treatment guidance, and data processing - First 3 models for clinical data computation and
last one for IT modules - Disease evaluation retrieve clinical variables,
calculate pretreatment parameters, and evaluate
PROs and PCRs. - Risk analysis analyze clinical variables and
parameters, identify risk indicators and
criteria, and so on. - Guidance criteria enables the generation of
evidence-based diagrams, online guidance and
decision support. - Data processing supports IT-related modules such
as clinical data conversion, database connection,
and graphical display.
20- Views OLAP portal, EBM informatics, management
interface, analysis view - Presentation patient- and clinician-oriented
interfaces direct OLAP portal and EBM
informatics. - Management management interface provides
security administration. - Analysis and database analysis view displays all
clinical data. - Controllers Data flow transformation, data
input validation, privilege control, role
identification, heterogeneous data transaction - Presentation data flow transformation and
data input validation control online inquiries - Management privilege control and role
identification secure system maintenance - Analysis and Database heterogeneous data
transaction coordinate clinical data
21Object Relation Mapping
- ORM a programming technique that converts data
between incompatible type systems in relational
databases and object-oriented programming
languages. - session interface conducts lightweight
instances in safe as the necessary data are
requested on the web tier all the time - session factory share many application objects
and cache scripted database transaction and other
mapping metadata for converting data. - configuration interface configures the location
of mapping documents and specific properties for
data retrieval - transaction interface keep applications
portable between different execution
environments. - query interface performs instances to control
data queries against the database - criteria interface executes object-oriented
criteria queries.
22ORM Data Flow
23Clinical Data Warehouse
- Data warehouse
- an integrated, subject-oriented, time-variant and
non-volatile database - provides support for decision making
- builds up an integral database for historical
data repository with lack of systematic
arrangement - allows complex queries and analyses on the
information without slowing down the operating
system - unified by the extract-transform-load (ETL)
procedure into database through extraction,
consolidation, filtering, transformation,
cleansing, conversion and aggregation - Clinic application
- integrate practical PROs and PCRs with a standard
procedure from different hospital databases into
the knowledge bank for advanced analysis
24ETL process
25Web Services
- Web Services (WS)
- an interface for describing a collection of
operations that are network accessible through
standardized XML messaging - W3C definition a software system designed to
support interoperable machine to machine
interaction over a network. - Standards
- WSDL (Web service definition language) -
translate metadata - SOAP (simple object access protocol) - transport
data - UDDI (universal description, discovery, and
integration) - search information
26Parsing flow for web service data with XML schema
27Online Analytical Process
- OLAP Online Analytical Process
- Keep complex query behind data mining for
knowledge bank - Leave simple data transaction through dynamic
views in data warehouse - OLAP in RTCDSS
- Cross over the web server and database
- Lead online computation within the RTCDSS
- Manage and analyze infometrix and clinical data
- PCR queries integrated with heterogeneous
databases are primarily progressed while
accessing the database server - Risk evaluations embedded within online session
logs are efficiently retrieved as connecting the
web server
28Framework withWS,MVC,ORMbeyondOLAP
29AJAX
- Asynchronous JavaScript XML-HttpRequest
- The AJAX technique is widely applied for online
interactive interface to grab instant information
and to avoid lag in transportation of
client-server data - Store transient data (e.g. images) at client
sites to reduce redundant data query with
database sites and enhance interactive patient-
and clinician-oriented interface. - Process numerous data queries between database
and web server - If the client site keeps sessions at online
status, the browser is calling JavaScriptTM and
restoring data. - Once the session needs reconnection or updating,
the client-server communication is activating. - Adjust data interaction performance as adopting
light-weight data like QOL questionnaires, risk
evaluations or guideline indexes. - The method doesnt need to request database all
the time but load into browsers temporary
container at client site.
30AJAX data transportation
31Three stage RTCDSS with CDW Integration
32DESIGN OF PATIENT AND CLINICIAN ORIENTED
INTERFACES
- Patient-oriented interface
- Clinician-oriented interface
- Integration design
33Interface and Infrastructure
- Two types of interfaces
- Patient-oriented and clinician-oriented
interfaces - Process PRO with clinical infometrics and
analyzing PCRs upon the EBM. - Five-layer infrastructure
- Acquisition acquire patient-reported outcomes
- Presentation present online clinical diagraph
- Management manage clinical information
- Analysis analyze patients clinical records
- Database coalesce diverse clinical databases
- Practice CIPC project in CMUH
34Patient-oriented Interface
- Infometrics for Quality of Life
- Infometrics Information Psychometrics
- Quality of Life (QOL)
- WHO individuals perceptions of their position
in life in the context of the culture and value
systems in which they live, and in relation to
their goals, expectations, standards, and
concerns. - EORTC QOL assessments in cancer clinical trials
to provide a more accurate evaluation of the
well-being of individuals or groups of patients
and of the benefits and side-effects that may
result from medical intervention. - EORTC C30 30 questionnaires for cancer
- EORTC PR25 25 questionnaires for prostate
cancer
35EORTC QOL Assessment
- C30 30-item cancer-speci?c questionnaire that
has often been used for patients with head and
neck cancer - 5 functional scales (physical, role, cognitive,
emotional, and social) with 9 multi-items - 3 symptom scales (fatigue, pain, and nausea and
vomiting) - 1 global health QOL scale and 6 single items
- PR25 25-item questionnaire for use among
patients with localized and metastatic prostate
cancer - Urinary symptoms (9 items)
- Bowel symptoms (4 items)
- Treatment-related symptoms (6 items)
- Sexual functioning (6 items)
36Clinical Implementation for Prostate Cancer
- CIPC Clinical Infometrix for Prostate Cancer
- CIPC Scope
- QOL is an important healthcare index but patients
probably conceal the truth because of private
manners. - The traditional paper-based QOL assessment
usually causes reading difficulty for patients
because of improper font size and print space. - Most of prostate caner patients are seniors who
initially might not know how to click
mouse-button or scroll the browser to navigate
the computer. - The infometrics module of CIPC system is designed
for patient orientation through sufficient
accessibility and accompanies QLQ with instant
PRO analysis and evaluation.
37- CIPC for patients
- The fonts of questionnaires are enlarged for
elderly patients who have poor eyesight. - the selection buttons are displayed on a touch
screen for patients who are not familiar with
using computer mouse. - The Web-page design is simplified by one-touch
action per question before the users are well
trained. - A multimedia function played with head phones is
optionally provided for low education level
patients who could read questions with limited
literacy. - CIPC procedure
- Patients are arranged privately in a consulting
room to complete the questionnaires while waiting
for the clinicians. - Clinicians could immediately evaluate the real
time reports with online analysis according to
automatic computation and statistical models.
38Clinic progress implemented with clinical
infometrics system
39Waiting for Clinic
Clinic Time
40- CIPC mechanism
- Clinicians and researchers can immediately access
infometrix data after patients completed the
questionnaires. - The clinician can make cross compare overall
treatment information with instant expert
opinions for advanced communicate with patients. - CIPC network infrastructure
- Network of CIPC needs to link hospital and campus
networks, but under hospitals information
security policy, to collaborate tiers of
database, analysis, management, presentation, and
acquisition for clinical and research workflows. - The infrastructure bridges both networks of
clinics and campus through the firewall to
routinely backup clinical data and maintain the
CIPC system.
41Network infrastructure of the CIPC system with
RTCDSS components
42- Five-tier infrastructure within CIPC network
- Database tier supports clinical and infometrix
data warehouse - Analysis tier assists analysts analyzing data and
feeds back statistical results as resource of the
knowledge bank - Management tier is the control center for
administrating data flow throughout the entire
system - Presentation tier presents real-time functions
for online decision support and interactive
guideline on a friendly interface for P2C
communication - Acquisition tier becomes the data collector to
execute online QOL assessment with accessibility
interface.
43Clinician-oriented interface
- Scope
- Evaluate pretreatment parameters for clinical
evidences - Guide clinicians to concurrently collect and
analyze specific clinical markers with instant
diagrams in CIPC for prostate cancer patients. - The CIPC system is proposed in urology clinic for
reflecting relationship between QOL and
pretreatment parameters such as PSA, clinical
classification stage, and Gleason score, etc. - Function
- Open source frameworks
- Graphical diagrams for PROs and PCRs
- Combine PCRs and biomarkers from diverse database
through networks - Guidelines for decision support
44- Prostate cancer treatment
- Suspicion of prostate cancer resulting in
prostatic biopsy is most often raised by
abnormalities found on digital rectal examination
(DRE). - PSA has evolved for the detection, staging, and
monitoring of men diagnosed with prostate cancer
since its discovery in 1979. - The four-stage TNM system indicates how far the
cancer has spread for defining prognosis and
selecting therapies the size of the tumor (T),
the number of involved lymph nodes (N), and the
presence of any other metastases (M) - The Gleason grade is based on a low-magnification
microscopic description of the architecture of
the cancer and is the most commonly used
classification scheme for the histological
grading of prostate.
45- PSA Level
- PSA Density density of prostate-specific
antigen - Most prostate cancer arises as clinically
nonpalpable disease with PSA between 2.5 and 10
ng/mL - PSAV PSA Velocity
- Linear regression of logarithm for PSA records
- PSADT PSA Doubling Time
- The relationship of two arbitrary PSAs measured
at the time T1 and T2 with respect to the
doubling time TD is formulated when ln(2P1) is
estimated.
46- TNM stage
- primary tumor (T)
- T1 stage presents tumor, but not detectable
clinically or with imaging - T2, the tumor can be palpated on examination, but
has not spread outside the prostate - T3, the tumor has spread through the prostatic
capsule - T4, the tumor has invaded other nearby
structures. - regional lymph nodes (N)
- N0, there has been no spread to the regional
lymph nodes - N1, there has been spread
- distance metastasis (M)
- M0, there is no distant metastasis
- M1, distant metastasis is found
47- Gleason score
- The predominant pattern that occupies the largest
area of the specimen is given a grade between 1
and 5. - then added to the grade assigned to the second
most dominant pattern - Gleason sum can be arranged between 2 and 10.
- This system describes tumors as "well",
"moderately, and "poorly" differentiated based
on Gleason score of 2-4, 5-6, and 7-10,
respectively.
48- Kaplan Meier survival estimation
- which is known as the product limit estimator,
estimates the survival function from life-time
data - Let S(t) be the probability that an item from a
given group of size N will have a lifetime
exceeding t. - ni is the number at risk just prior to time ti,
and di, the number of deaths at time ti, where i
1, 2, , N. - ti is equal or less than ti1
- the intervals between each time typically will
not be uniform. - When there is no censoring, ni is the number of
survivors just prior to time ti. - With censoring, ni is the number of survivors
less the number of losses. - It is only those surviving cases that are still
being observed that are at risk of an observed
death.
49- Cox Proportional Hazard Model
- h0(t) is the baseline hazard involving t but not
Xs - X denotes a collection of p explanatory variables
X1, X2, , Xp - the model is nonparametric because h0(t) is
unspecified. - For PSA variables correlation in prostate cancer
treatment, these variables may include age, race,
initial PSA, PSAV, PSAD, clinical stage,
treatment, and so on.
50K-M Survival vs. CoxPH Model Curves for the same
data set
51- Instant analytical diagram
- PSA-related information
- such as PSAD, PSAV and PSADT can be calculated
and perform real time online analytical diagrams - Partin table
- include primary clinical stage, serum PSA level,
and Gleason score to determine the probability of
having a final pathologic stage based on logistic
regression analyses for all 3 variables combined - predict cancer's pathologic stage after the
prostate gland has been surgically removed and
examined by a pathologist - (1) organconfined disease
- (2) established capsular penetration
- (3) seminal vesicle involvement
- (4) lymph node involvement.
52PSA-related information on clinician-oriented
interface
53Partin table
54- Risk evaluation criteria
- constructed on the basis of large numbers of
patients who have undergone radical prostatectomy
to aid in the precise prediction of pathologic
stage by using multiple clinical parameters as
accurate predictors of both cancer extent and
long-term outcomes after treatment of the primary
tumor.
55Integration Design
- Platform
- Based on RTCDSS design, the CIPC system is built
with open source framework of JavaTM technique
while Apache TomcatTM and OracleTM are selected
as Web and database servers - The system components with flexible functionality
and keep-in-simple-stupid (KISS) interface are
designed to enhance the human computer
interaction. - The system involves database, analysis,
management, presentation, and acquisition layers
on the modelized architecture
56Five Layer CIPC RTCDSS
57Entity Relationship Diagram (ERD) of CIPC
58- The database layer
- the foundation of the system for building
clinical data warehouse. - The ERD denote correlation between QOL domains
and treatment effects due to two sets of fact
tables for infometrix and clinical records - Answer_Full and Answer_Domain tables store
and transform assessment data to QOL domain score - Patient_Info and Prostate_Cancer tables
retrieve data from PCR. - Answer_Index is an index table to bridge
Answer and Question tables, which request and
arrange assessment data, and derive cube
dimensions of PSA, treatment, clinical stages and
Gleason scores.
59- The analysis layer
- assists researchers analyzing data and feeds back
statistical results as resource of knowledge
bank. - several types of data file formats converted from
database were generated to satisfy different
progresses supported by analysis tools. - incorporates database and application servers
with remote computation or offline data mining
and feed expert opinions back to knowledge bank
of RTCDSS. - The management layer
- plays the role of control center for managing
data flow within the entire system and share
functionality with privilege roles of health care
people, clinicians and researchers. - enhance capability of data access functions for
health care people and researchers to plot online
charts, identify single sign-on, process data
conversion, administrate user privilege, and
acquire QOL assessment.
60- The presentation layer
- the interface of real time decision support for
communication of patients and clinicians. - present instantaneous statistical diagrams by
referencing expert opinions from knowledge bank
for clinicians. - Perform real time QOL evaluation with respect to
other patients, initial PSA, Gleason score,
treatment stage, etc. - Clinicians are able to indicate treatment indexes
online through graphical interface for decision
support. - The acquisition layer
- becomes the data receiver of the system to
execute QLQ online behind accessibility interface
design. - the touched screen, the sizeable large fonts, and
the audio media with ear phones are functioned
for accessibilities of patients who fell
uncomfortable for traditional paper works or
private issues.
61PRACTICE OF PATIENT-TO-CLINICIAN STRATEGY
- Interactive guideline
- P2C communication
- Advantage and difficulty
- Practice discussions
62Interactive guideline
- Statistics of QOL domains
- All QOL domains reflect the functions and
symptoms of a patient in physical and mental
conditions during the treatment cycle. - Clinicians can realize statistic results of
patients disease conditions at the beginning of
clinic. - It helps the patient describe their real health
condition to avoid ambiguous conversation. - Disease evaluation of the PSA level
- The real-time diagram shows the disease
information of the patients PSA level throughout
different treatments. - the system retrieved the patients PCRs with
related pretreatment parameters and disease
history. - The baseline of PSA is completely plotted during
different treatment cycles.
63Patient-Oriented Interface
64Statistics of QOL Domains
65Real time online chart of patients QOL history
66Graphical QOL diagram with clinical marker - QOL
vs. PSA baseline
67- Risk guidance with the Partin table
- the clinician can easily find and input
pretreatment parameters such as PSA, Gleason
score, and a clinical stage to determine the risk
percentage by using the Partin table module. - Ex the clinician input T1c, 32.4, and 5-6 for
TNM stage, PSA value and Gleason grade,
respectively the system estimated risk
percentage in high risk group that shows more
than 50 for 5 years of post-therapy PSA failure
as well as 30 and 29 for 5-year and 10-year PSA
failure-free survival, respectively. - Interactive guidelines for treatment reference
- Clinicians can interact with the guideline thus
the phase of treatment procedure based on the
criteria are carried out for decision making as
PCRs are input. - Ex if the PSA was 25.5ng/ml, the clinical stage
was T3, Gleason score was 8, life expectancy was
more than 5 years, with symptomatic therapy as
bone scan.
68Online recurrence risk evaluation and Partin table
69Interactive Guideline of CIPC system
70Interactive guideline of CIPC system (with AJAX)
71- Special diagnostic chart for automated
prescription - The special diagnostic chart lists primary
clinical markers for selection to prevent typing
error by clinicians as input PCRs. - the clinician can select required item to
concurrently produce unified statement of
automated prescription as inputting data into the
database for related HIS.
72P2C communication
- In the past years
- prostate cancer patients were tracked by
handwriting QOL assessments during cure period
but lacks of automatic progress - patients used to complete paper works through
conversation with health care people because of
physical or mental suffering - doctors took many efforts to explain PROs at
clinic time by printing out PCRs for advices - Expected communication to consolidate
relationship - increase interaction with patients
- reduce official burden of health care people
- encrypt data prior to database to avoid being
falsified and stolen - simple operating process and user-friendly
interface
73Patient-Computer interface for P2C communication
74- P2P Functions
- Cross comparison
- the real time online chart supports the clinician
and patient to take an overview for discussing
the variation of QOL compared with the mean value
of other patients. - It enhanced the patient with confidence to
interact with doctors for advanced treatment as
recognizing QOL history and clinical markers. - Overall evaluation
- PSA history is compared with QOL domains to study
heal condition after accepting treatment
75- Real time informetrix categories for patients
- The best practice of RTCDSS is for patients whose
disease can be chronically and periodically
tracked by clinical markers. - The CIPC design provides real time infometrix to
display PSA values with QOL domains including
categories of physical, role, cognitive,
emotional, and social functions besides that of
fatigue, pain, nausea and vomiting symptoms. - It reflects urinary, bowel, treatment-related
symptoms and male-related sexual functioning. - Patients can recognize personal health condition
immediately with respect to others through the
instant graphical chart in the clinic.
76Real time online QOL vs. Other patients
77- System implementation and approvement
- Online informatics for clinicians
- assist in the treatment of chronic diseases that
can be periodically tracked - online informatics displays PSA-related data to
provide categories of diagnostic information - Clinicians can identify patients health
conditions directly with respect to treatments
through the instant diagrams. - save hours, even several days, of analysis by
providing instant computation of the relevant
parameters - Improvement in clinician-patients relationships
- clinicians predicted potential disease risk
- clinicians offer proper suggestions, treatments,
and tracking conditions
78- Enhancement in P2C communication
- enhance clinicians awareness of their patients
- Clinicians discover reliable predictive
information for prostate cancer patients through
real time statistics and computation - manual mistakes can be eliminated by the
automatic transportation procedure to ensure data
quality
79(No Transcript)
80Advantage and Difficulty
- Advantage
- enhance clinical care for patients, support
optimal treatment options for clinicians, and
increase efficiency in clinics. - (a) ensuring quality of clinical care
- (b) providing the clinicians real-time online
clinical informatics - (c) enhancing P2C communication
- (d) improving clinician-patients relationships.
- Difficulty
- Hospital management and security policy limited
the CIPC system only work partially for proposed
clinic beyond hospital network. - As adapting the system to the legacy HIS, noises
of diverse systems are always counted for
integration. - The structural reformation on original HIS should
be avoidant but through gradual data immigration
under administration rules.
81- Strategy quasi real time procedure
- CIPC system was installed in the server at the
urology clinics in which an individual patient
used to make appointment on a specific day of
week. In compliance with hospital management for
safety policy, the power of clinic room was
turned off after clinics and the CIPC server must
be shutdown. - To avoid conflicting with the HIS but ensure data
transformation can synchronize between
inconsistent systems, a process scheduling module
was employed for data importation between the HIS
and CIPC system. The module was embedded in both
systems to retrieve required data from the backup
log of CIPC system at a specified time point and
transform data into the HIS database. - As a result, clinicians could obtain the last
patient outcomes if their data were imported into
the HIS just before clinic time.
82- Quasi real time procedure
- Presents three data-update jobs in a cycle as
considering two scheduling points before and
after the clinics. - At the first point in the first clinic, the
required data are replicated into the backup log.
In the cycle, clinicians activate the start
button to load PCRs and clinical markers from the
log into CIPC database and then, the new
outcomes will be input during clinic time. - After the clinic, clinicians can update complete
remarks of PCR to CIPC database and all data will
be restored to the backup log concurrently. - At the second point in the last clinic, the log
will be retrieved in schedule and be transformed
into the HIS. - Once the CIPC server is activated, the scheduling
will be automatically started. - In the study, the process scheduling was executed
twice per week by urological clinics.
83Quasi real time procedure
84Practice discussions
- Benefits
- (1) clinicians can explain health conditions
clearly to patients by visualized clinical
variables and pretreatment parameters - (2) patients are more easily convinced by
evidence-based diagrams before accepting the risk
evaluation of treatments and the treatment
quality can be confirmed - (3) the design presents real-time disease and
risk evaluation while the interactive guidelines
with treatment suggestions offer the clinician
efficient online tools for instant decision
making - (4) the proposed framework is constructed upon
the Web-based MVC architecture that consists of
reusable models, making it flexible and adaptable
with many hospital information systems
85- Discussions
- Clinicians learned more reliable information
regarding patients private QOL. The efficient
diagnosis and communication certainly encourages
the advanced study. - With RTCDSS for predicting treatment assistance,
diverse functionalities can be expectant for
advance clinical decision, context-specific
access, automatic risk assessment, personal
digital assistant screens, as well as
practitioner performance and cost-effectiveness
on patient outcomes - It can also incorporate with advanced prediction
models such as nomograms, which may help patients
and their treating physicians make informed
decisions based on the probability of a
pathologic stage, the patients risk tolerance,
and the values they place on the various
potential outcomes
86CONCLUSIONS
87Conclusion Remarks
- This study reveals clinical and infometrics
progress with information technology to establish
fundamentals of the RTCDSS. - Methodologies include MVC architecture, Web
services, online analytical process, clinical
data warehouse, object relation mapping, and AJAX
while the practical CIPC system is implemented
for approval. - The infrastructure integrates five layers to
establish expandable models with flexibility for
providing accessible functions in clinic
applications of prostate cancer.
88- Heterogeneous database systems distributed in
hospital, clinic and campus networks were
integrated for an expert bank with remote data
backup and disaster recovery. - A patient- and clinician-oriented interface is
considered as a major subject to assist P2C
communication. - In advance, the patient outcome is available to
offer instant statistical charts for decision
making as well as improved communication and
relationship between clinicians and patients. - Furthermore, the RTCDSS enables interactive
guideline for knowledge feedback, facilitate
decision-making, and to improve quality of care.
89Acknowledgment
- The author sincerely appreciates Prof. Hsi-Chin
Wu, Chih-Hung Chang, Tsai-Chung Li, Wen-Miin
Liang, and Jong-Yi Wang for their encouragements
and consultants. - The author also thanks IT-engineer Yu-Yuan Chou
and Statistician Yi-Chun Yeh as well as
Biostatistics Center of China Medical University
for their help in statistical analysis and
informatics support. - This study was granted by National Science
Council and China Medical University with
projects no. NSC100-2625-M-039-001, CMU96-153,
CMU96-228, and CMU97-321.
90APPENDIXCIPC PHOTOS
91CIPC Clinics QOL Assessment
92Patient-oriented Interface
93CIPC Server Room
94Clinic Time
95CIPC Demo