automation – way forward to achieve data integrity

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A Global Laboratory Informatics Company Making Labs Proficient Data Integrity Conference - Sept 1, 2016 Mumbai Presented by : Mukunth Venkatesan (CEO, Agaram Technologies) Automation – Way Forward to Achieve Data Integrity

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Page 1: Automation – Way Forward to Achieve Data Integrity

A Global Laboratory Informatics Company Making Labs Proficient

Data Integrity Conference - Sept 1, 2016 MumbaiPresented by : Mukunth Venkatesan (CEO, Agaram Technologies)

Automation – Way Forward to Achieve Data Integrity

Page 2: Automation – Way Forward to Achieve Data Integrity

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Why is Data Integrity Important?

“Data Integrity is considered as the first and foremost

requirement in a pharmaceutical quality system to ensure

that the medicines are of the required quality”

Page 3: Automation – Way Forward to Achieve Data Integrity

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What is Data Integrity

Data Integrity is defined as the “the completeness, consistency, and accuracy of data. Complete,

consistent, and accurate data should be Attributable, Legible, Contemporaneously recorded, Original or a true copy, and

Accurate.”

This is also known as the ALCOA principles guiding Data Integrity.

Page 4: Automation – Way Forward to Achieve Data Integrity

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ContemporaneousRecording Date & Time

AccurateData with no errors or

editing

OriginalJustifying data is true copy

LegiblePermanent Recording

ConsistentConsistent application of date & time stamps

in the expected sequence

EnduringRecorded in enduring

media

ORIGINAL75+ FTEs supporting customers globally

AvailableAvailable , accessible for review/audit for lifetime

of record

CompleteAll data including repeat or

re-analysis

ConsistentConsistent application of date & time stamps

in the expected sequence

AttributableSource of Data & Who

ALCOA De-mystified

Page 5: Automation – Way Forward to Achieve Data Integrity

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ALCOA – How to achieve?Attributable Source of data identified

with a process and person

Legible Permanently recorded. Human Readable.

Contemporaneous Data Identified with a date and time.

Original or True Copy

Data certified as correct by an authorized person

Accurate Data should not have any errors

Data stored electronically should achieve this

Built in Time Stamp at the time of creation or modification of data

Electronic Signature should satisfy this need

Data captured directly without human intervention should ensure this

Built in Audit Trail identifies the data to a source, person & process

Page 6: Automation – Way Forward to Achieve Data Integrity

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DataGeneration &

Recording

Processing

Method

Accuracy

Result Data

Application Data System

Authenticated, Secure & Protected

Central Storage

Automation

Automation Architecture for Data Integrity Assurance

Page 7: Automation – Way Forward to Achieve Data Integrity

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• An environment for controlled access to any application• Automatic pushing of data and meta data generated or

modified to server- without user intervention • Users can still continue to modify or update data• Modified data is pushed to server automatically• Full audit trail of all activities to be available at server• Review & approval based on server data (true copy)• Result or decision should be taken from the server

Data Integrity- Functional Requirements

Page 8: Automation – Way Forward to Achieve Data Integrity

8Risk Mitigation- Data Generation & Recording

• How and where is original data created?• Created in the local hdd. With a copy in the server (controlled area)

• How do you ensure that the data is complete, accurate and traceable to meet ALCOA? • Automation ensures that (raw, meta, human readable) are all moved to server

• Is it possible to recreate, amend or delete original data and metadata?• Automation should help in identifying amendments and NO possibility to delete

or obscure data• How data is transferred to other locations or systems for processing or storage• Automation can help in transfer of data in a controlled manner for processing or

storage. Any change due to processing needs to be handled by automation solution.

Page 9: Automation – Way Forward to Achieve Data Integrity

9Risk Mitigation- Data Accessing & Processing

• How is data processed?• Method used for processing to be identified as metadata for capture• Where no external metadata is available for processing, data should contain

relevant metadata or manually record conditions under which data was created or modified

• How is data processing recorded?• Any change in data due to processing should always be captured by the automation

• Does the person processing the data have the ability to influence what data is reported, or how it is presented?• Make automation server as the primary source of data (to prevent influence)• Even if a person does trials all trials should be captured as independent versions

Page 10: Automation – Way Forward to Achieve Data Integrity

10Risk Mitigation- Completeness, Accuracy of reported data

• Is original data (including the original data format) available for checking?• Always original data is available in original format at server• Accuracy or reported data can be cross checked based on original data for data

integrity at any point and time

• Does the data reviewer have visibility and access to all data generated & processed?• Reviewer can check all data generated in one go and from a single point (server)

without having to look at individual systems.• Cross-checking can be done by download and re-creation of output using the

original application

Page 11: Automation – Way Forward to Achieve Data Integrity

Data Integrity – Solution

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AUTOMATION – Way Forward to Achieve Data Integrity

By Implementing Scientific Data Management System (SDMS), Electronic Lab Notebook (ELN) & Document Management System (DMS)

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a • Solution for instrument generated data

b • Control over access & audit trail

c • Control over generated & processed data

d • Automatic data version control

e • Electronic Review & Approval

Scientific Data Management System (SDMS)

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a • Template Based approach

b • Deploy in QC & Production

c • Integrate via RS232 or TCP/IP

d • Data Versioning

e • Audit trail & Electronic Review

Electronic Lab Notebook (ELN)

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Electronic Document Management & Issuance control

a

• Manage organisation wide• Document preparation• Review, Approval & Release

c • Document Request & Issuance

d • Auto filling of Tags (batch#)

e • PDF Document with Electronic signature

f • Print Control

Page 16: Automation – Way Forward to Achieve Data Integrity

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[email protected]

+91-44-4208-2005Making Labs Proficient

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