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monitor-data-integrity

pjt222
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À propos

Cette compétence aide les développeurs à concevoir et à exploiter un programme de surveillance de l'intégrité des données pour les systèmes GxP, basé sur les principes ALCOA+. Elle fournit des contrôles détectifs, des calendriers de revue des pistes d'audit et des modèles pour détecter des anomalies telles que des activités en dehors des heures de travail ou des modifications en masse. Utilisez-la lors de la mise en place d'un programme de surveillance, de la préparation aux inspections ou de la mise en œuvre des directives réglementaires de la MHRA, de l'OMS ou de PIC/S.

Installation rapide

Claude Code

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Git CloneAlternatif
git clone https://github.com/pjt222/agent-almanac.git ~/.claude/skills/monitor-data-integrity

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Documentation

Monitor Data Integrity

Design and operate a programme that continuously monitors data integrity across validated systems using ALCOA+ principles and anomaly detection.

When to Use

  • Establishing a data integrity monitoring programme for GxP systems
  • Regulatory inspection preparation where data integrity is a focus area
  • After a data integrity incident requiring enhanced monitoring
  • Periodic review of existing data integrity controls
  • Implementing MHRA, WHO, or PIC/S data integrity guidance

Inputs

  • Required: Systems in scope and their ALCOA+ risk profile
  • Required: Applicable guidance (MHRA Data Integrity, WHO TRS 996, PIC/S PI 041)
  • Required: Current audit trail capabilities of each system
  • Optional: Previous data integrity findings or regulatory observations
  • Optional: Existing monitoring procedures or metrics
  • Optional: User access matrices and role definitions

Procedure

Step 1: Assess Current ALCOA+ Posture

Evaluate each system against all ALCOA+ principles:

# Data Integrity Assessment
## Document ID: DIA-[SITE]-[YYYY]-[NNN]

### ALCOA+ Assessment Matrix

| Principle | Definition | Assessment Questions | System 1 | System 2 |
|-----------|-----------|---------------------|----------|----------|
| **Attributable** | Who performed the action and when? | Are all entries linked to unique user IDs? Is the timestamp system-generated? | G/A/R | G/A/R |
| **Legible** | Can data be read and understood? | Are records readable throughout retention period? Are formats controlled? | G/A/R | G/A/R |
| **Contemporaneous** | Was data recorded at the time of the activity? | Are timestamps real-time? Are backdated entries detectable? | G/A/R | G/A/R |
| **Original** | Is this the first-captured data? | Are original records preserved? Is there a clear original vs copy distinction? | G/A/R | G/A/R |
| **Accurate** | Is the data correct and truthful? | Are calculations verified? Are transcription errors detectable? | G/A/R | G/A/R |
| **Complete** | Is all data present? | Are deletions detectable? Are all expected records present? | G/A/R | G/A/R |
| **Consistent** | Are data elements consistent across records? | Do timestamps follow logical sequence? Are versions consistent? | G/A/R | G/A/R |
| **Enduring** | Will data survive for the required retention period? | Is the storage medium reliable? Are backups verified? | G/A/R | G/A/R |
| **Available** | Can data be accessed when needed? | Are retrieval procedures documented? Are access controls appropriate? | G/A/R | G/A/R |

Rating: G = Good (controls adequate), A = Adequate (minor improvements needed), R = Remediation required

Got: Every system has a rated ALCOA+ assessment with specific findings for each principle. If fail: If a system cannot be assessed (e.g., no audit trail capability), flag it as a critical gap requiring immediate remediation.

Step 2: Design Detective Controls

Define the monitoring activities that detect data integrity violations:

# Detective Controls Design
## Document ID: DCD-[SITE]-[YYYY]-[NNN]

### Audit Trail Review Schedule
| System | Review Type | Frequency | Reviewer | Scope |
|--------|-----------|-----------|----------|-------|
| LIMS | Comprehensive | Monthly | QA | All data modifications, deletions, and access events |
| ERP | Targeted | Weekly | QA | Batch record modifications and approvals |
| R/Shiny | Comprehensive | Per analysis | Statistician | All input/output/parameter changes |

### Review Checklist
For each audit trail review cycle:
- [ ] All data modifications have documented justification
- [ ] No unexplained deletions or void entries
- [ ] Timestamps are sequential and consistent with business operations
- [ ] No off-hours activity without documented justification
- [ ] No shared account usage detected
- [ ] Failed login attempts are within normal thresholds
- [ ] No privilege escalation events outside change control

Got: Detective controls are scheduled, assigned, and documented with clear review criteria. If fail: If audit trail reviews are not performed on schedule, document the gap and escalate to QA management. Missed reviews accumulate risk.

Step 3: Define Anomaly Detection Patterns

Create specific patterns that trigger investigation:

# Anomaly Detection Patterns

### Pattern 1: Off-Hours Activity
**Trigger:** Data creation, modification, or deletion outside business hours (defined as [06:00-20:00 local time, Monday-Friday])
**Threshold:** Any GxP-critical data modification outside defined hours
**Response:** Verify with user and supervisor within 2 business days
**Exceptions:** Documented shift work, approved overtime, automated processes

### Pattern 2: Sequential Modifications
**Trigger:** Multiple modifications to the same record within a short timeframe
**Threshold:** >3 modifications to the same record within 60 minutes
**Response:** Review modification reasons; verify each change has documented justification
**Exceptions:** Initial data entry corrections within [grace period, e.g., 30 minutes]

### Pattern 3: Bulk Changes
**Trigger:** Unusually high volume of data modifications by a single user
**Threshold:** >50 modifications per user per day (baseline: [calculate from normal usage])
**Response:** Verify business justification for bulk activity
**Exceptions:** Documented batch operations, data migration activities under change control

### Pattern 4: Delete/Void Spikes
**Trigger:** Unusual number of record deletions or voidings
**Threshold:** >5 delete/void events per user per week
**Response:** Immediate QA review of deleted/voided records
**Exceptions:** None — all delete/void events require documented justification

### Pattern 5: Privilege Escalation
**Trigger:** User access changes granting administrative or elevated privileges
**Threshold:** Any privilege change outside the user access management SOP
**Response:** Verify with IT security and system owner within 24 hours
**Exceptions:** Emergency access per documented emergency access procedure

### Pattern 6: Audit Trail Gaps
**Trigger:** Missing or interrupted audit trail entries
**Threshold:** Any gap > 0 entries (audit trail should be continuous)
**Response:** Immediate investigation — potential system malfunction or tampering
**Exceptions:** None — audit trail gaps are always critical

Got: Patterns are specific, measurable, and actionable with defined thresholds and response procedures. If fail: If thresholds are set too low (excessive false positives), adjust based on baseline data. If too high (missing real issues), tighten after the first monitoring cycle.

Step 4: Build Metrics Dashboard

# Data Integrity Metrics Dashboard
## Document ID: DIMD-[SITE]-[YYYY]-[NNN]

### Key Performance Indicators

| KPI | Metric | Target | Yellow Threshold | Red Threshold | Source |
|-----|--------|--------|-----------------|---------------|--------|
| DI-01 | Audit trail review completion rate | 100% | <95% | <90% | Review log |
| DI-02 | Anomalies detected per month | Trending down | >10% increase MoM | >25% increase MoM | Anomaly log |
| DI-03 | Anomaly investigation closure rate | <15 business days | >15 days | >30 days | Investigation log |
| DI-04 | Open data integrity CAPAs | 0 overdue | 1-2 overdue | >2 overdue | CAPA tracker |
| DI-05 | Shared account instances detected | 0 | 1-2 | >2 | Access review |
| DI-06 | Unauthorised access attempts | <5/month | 5-10/month | >10/month | System logs |
| DI-07 | Audit trail gap events | 0 | N/A | >0 (always red) | System monitoring |

### Reporting Cadence
| Report | Frequency | Audience | Owner |
|--------|-----------|----------|-------|
| DI Metrics Summary | Monthly | QA Director, System Owners | QA Analyst |
| DI Trend Report | Quarterly | Quality Council | QA Manager |
| DI Annual Review | Annual | Site Director | QA Director |

Got: Dashboard provides at-a-glance compliance status with clear escalation triggers. If fail: If data sources cannot support automated metrics, implement manual collection and document the plan to automate.

Step 5: Establish Investigation Triggers and Escalation

# Investigation and Escalation Matrix

### Investigation Triggers
| Trigger | Severity | Response Time | Investigator |
|---------|----------|---------------|-------------|
| Audit trail gap detected | Critical | Immediate (within 4 hours) | IT + QA |
| Confirmed data falsification | Critical | Immediate (within 4 hours) | QA Director |
| Anomaly pattern confirmed after review | Major | Within 5 business days | QA Analyst |
| Repeated anomalies from same user | Major | Within 5 business days | QA + HR |
| Overdue audit trail review | Minor | Within 10 business days | QA Manager |

### Escalation Path
| Level | Escalated To | When |
|-------|-------------|------|
| 1 | System Owner | Any confirmed anomaly |
| 2 | QA Director | Major or critical finding |
| 3 | Site Director | Critical finding or potential regulatory impact |
| 4 | Regulatory Affairs | Confirmed data integrity failure requiring regulatory notification |

Got: Every investigation has a defined severity, timeline, and escalation path. If fail: If investigations are not completed within defined timelines, escalate to the next level.

Step 6: Compile the Monitoring Plan

Assemble all components into the master data integrity monitoring plan:

# Data Integrity Monitoring Plan
## Document ID: DI-MONITORING-PLAN-[SITE]-[YYYY]-[NNN]

### 1. Purpose and Scope
[From assessment scope]

### 2. ALCOA+ Assessment Summary
[From Step 1]

### 3. Detective Controls
[From Step 2]

### 4. Anomaly Detection Rules
[From Step 3]

### 5. Metrics and Reporting
[From Step 4]

### 6. Investigation and Escalation
[From Step 5]

### 7. Periodic Review
- Monitoring plan review: Annual
- Anomaly thresholds: Adjust after each quarterly review
- ALCOA+ re-assessment: When systems change or new systems are added

### 8. Approval
| Role | Name | Signature | Date |
|------|------|-----------|------|
| QA Director | | | |
| IT Director | | | |
| Site Director | | | |

Got: A single, approved document that defines the complete data integrity monitoring programme. If fail: If the plan is too large for a single document, create a master plan with references to system-specific monitoring procedures.

Validation

  • ALCOA+ assessment completed for all in-scope systems
  • Audit trail review schedule defined with frequency, scope, and responsible reviewer
  • At least 5 anomaly detection patterns defined with specific thresholds
  • Metrics dashboard has KPIs with green/yellow/red thresholds
  • Investigation triggers defined with severity and response timelines
  • Escalation matrix reaches regulatory affairs for critical findings
  • Monitoring plan approved by QA and IT leadership
  • Periodic review schedule established

Pitfalls

  • Monitoring without action: Collecting metrics but never investigating anomalies provides a false sense of security and is worse than no monitoring (it generates evidence of ignored findings).
  • Static thresholds: Thresholds based on guesswork rather than baseline data generate excessive false positives, leading to alert fatigue.
  • Audit trail review as checkbox: Reviewing audit trails without understanding what to look for is ineffective. Train reviewers on anomaly detection patterns.
  • Ignoring system limitations: Some systems have poor audit trail capabilities. Document limitations and implement compensating controls rather than pretending the limitation does not exist.
  • No trending: Individual anomalies may seem minor, but patterns across time or users reveal systemic issues. Always trend data integrity metrics.

Related Skills

  • design-compliance-architecture — identifies systems requiring data integrity monitoring
  • implement-audit-trail — the technical foundation that monitoring relies on
  • investigate-capa-root-cause — when monitoring detects issues requiring formal investigation
  • conduct-gxp-audit — audits assess the effectiveness of the monitoring programme
  • prepare-inspection-readiness — data integrity is a primary regulatory inspection focus area

Dépôt GitHub

pjt222/agent-almanac
Chemin: i18n/caveman-lite/skills/monitor-data-integrity
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