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implement-pharma-serialisation

pjt222
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Diese Fähigkeit unterstützt Entwickler bei der Implementierung von pharmazeutischen Serialisierungssystemen, die globalen Vorschriften wie der EU FMD und der US DSCSA entsprechen. Sie umfasst die Generierung eindeutiger Identifikatoren, die Verwaltung von Aggregationshierarchien und den Austausch von EPCIS-Daten. Nutzen Sie sie bei der Einführung eines serialisierten Produkts, der Integration mit Verifizierungssystemen (EMVS/NMVS) oder der Gestaltung konformer Transaktionsaustausche.

Schnellinstallation

Claude Code

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Dokumentation

Implement Pharmaceutical Serialisation

Set up pharmaceutical serialisation systems for regulatory compliance with global track-and-trace mandates.

When to Use

  • Implementing serialisation for a new product launch in the EU or US market
  • Integrating with the European Medicines Verification System (EMVS/NMVS)
  • Designing DSCSA-compliant transaction information exchange
  • Building or integrating an EPCIS event repository for supply chain visibility
  • Extending serialisation to additional markets (China NMPA, Brazil ANVISA, etc.)

Inputs

  • Required: Product information (GTIN, product code, dosage form, pack sizes)
  • Required: Target market regulations (EU FMD, DSCSA, or both)
  • Required: Packaging hierarchy (unit, bundle, case, pallet)
  • Optional: Existing ERP/MES system details for integration
  • Optional: Contract manufacturer serialisation capabilities
  • Optional: Verification endpoint specifications

Procedure

Step 1: Understand the Regulatory Landscape

RegulationRegionKey RequirementsDeadline
EU FMD (2011/62/EU)EU/EEAUnique identifier + tamper-evident feature on each unitLive since Feb 2019
DSCSAUSAElectronic, interoperable tracing at package levelFull enforcement Nov 2024+
China NMPAChinaUnique drug traceability code per minimum saleable unitRolling
Brazil ANVISA (SNCM)BrazilSerialisation of pharmaceuticals with IUMRolling
Russia MDLPRussiaCrypto-code per unit, mandatory scanningLive

Key data elements per regulation:

EU FMD unique identifier (per Delegated Regulation 2016/161):

  • Product code (GTIN-14 from GS1)
  • Serial number (up to 20 alphanumeric characters, randomised)
  • Batch/lot number
  • Expiry date

DSCSA transaction information:

  • Product identifier (NDC/GTIN, serial number, lot, expiry)
  • Transaction information (date, entities, shipment details)
  • Transaction history and transaction statement
  • Verification at package level

Got: Clear understanding of which regulations apply to each product-market combination. If fail: Engage regulatory affairs to confirm market requirements before proceeding.

Step 2: Design the Serialisation Data Model

-- Core serialisation data model
CREATE TABLE serial_numbers (
    id BIGSERIAL PRIMARY KEY,
    gtin VARCHAR(14) NOT NULL,          -- GS1 GTIN-14
    serial_number VARCHAR(20) NOT NULL,  -- Unique per GTIN
    batch_lot VARCHAR(20) NOT NULL,
    expiry_date DATE NOT NULL,
    status VARCHAR(20) DEFAULT 'ACTIVE', -- ACTIVE, DECOMMISSIONED, DISPENSED, etc.
    created_at TIMESTAMPTZ DEFAULT NOW(),
    UNIQUE(gtin, serial_number)
);

-- Aggregation hierarchy
CREATE TABLE aggregation (
    id BIGSERIAL PRIMARY KEY,
    parent_code VARCHAR(50) NOT NULL,     -- SSCC or higher-level code
    parent_level VARCHAR(10) NOT NULL,    -- CASE, PALLET, BUNDLE
    child_code VARCHAR(50) NOT NULL,      -- GTIN+serial or child SSCC
    child_level VARCHAR(10) NOT NULL,     -- UNIT, BUNDLE, CASE
    aggregation_event_id UUID NOT NULL,
    created_at TIMESTAMPTZ DEFAULT NOW()
);

-- EPCIS events
CREATE TABLE epcis_events (
    id UUID PRIMARY KEY DEFAULT gen_random_uuid(),
    event_type VARCHAR(30) NOT NULL,      -- ObjectEvent, AggregationEvent, TransactionEvent
    action VARCHAR(10) NOT NULL,          -- ADD, OBSERVE, DELETE
    biz_step VARCHAR(100),               -- urn:epcglobal:cbv:bizstep:commissioning
    disposition VARCHAR(100),             -- urn:epcglobal:cbv:disp:active
    read_point VARCHAR(100),             -- urn:epc:id:sgln:location
    event_time TIMESTAMPTZ NOT NULL,
    event_timezone VARCHAR(6) NOT NULL,
    payload JSONB NOT NULL,
    created_at TIMESTAMPTZ DEFAULT NOW()
);

Aggregation hierarchy:

Pallet (SSCC)
  └── Case (SSCC)
       └── Bundle (GTIN + serial) [optional level]
            └── Unit (GTIN + serial)

Got: Data model supports full pack hierarchy with EPCIS event tracking. If fail: If existing ERP schema conflicts, design an integration layer rather than modifying ERP directly.

Step 3: Implement Serial Number Generation

import secrets
import string

def generate_serial_number(length: int = 20, charset: str = None) -> str:
    """Generate a random serial number compliant with GS1 standards.

    EU FMD requires randomised serial numbers to prevent prediction.
    Max 20 characters, alphanumeric (GS1 Application Identifier 21).
    """
    if charset is None:
        # GS1 AI(21) allows: digits, uppercase, lowercase, and some special chars
        # Most implementations use alphanumeric only for interoperability
        charset = string.ascii_uppercase + string.digits
    return ''.join(secrets.choice(charset) for _ in range(length))


def generate_serial_batch(gtin: str, batch_lot: str, expiry: str, count: int) -> list:
    """Generate a batch of unique serial numbers for a production run."""
    serials = set()
    while len(serials) < count:
        serials.add(generate_serial_number())
    return [
        {
            "gtin": gtin,
            "serial_number": sn,
            "batch_lot": batch_lot,
            "expiry_date": expiry,
            "status": "COMMISSIONED"
        }
        for sn in serials
    ]

Got: Serial numbers are cryptographically random, unique per GTIN, and stored before printing. If fail: If a uniqueness collision occurs, regenerate the conflicting serial and log the event.

Step 4: Implement GS1 DataMatrix Encoding

The 2D DataMatrix barcode encodes the GS1 element string:

(01)GTIN(21)Serial(10)Batch(17)Expiry

Example:

(01)05012345678901(21)A1B2C3D4E5(10)LOT123(17)261231

Where:

  • AI(01) = GTIN-14
  • AI(21) = Serial number
  • AI(10) = Batch/lot number
  • AI(17) = Expiry date (YYMMDD)

The GS1 DataMatrix uses FNC1 as a separator (GS character, ASCII 29) between variable-length fields.

def encode_gs1_element_string(gtin: str, serial: str, batch: str, expiry: str) -> str:
    """Encode GS1 element string for DataMatrix printing.

    FNC1 (GS character \\x1d) separates variable-length fields.
    AI(01) and AI(17) are fixed length, so no separator needed after them.
    AI(21) and AI(10) are variable length and need FNC1 terminator.
    """
    GS = '\x1d'  # GS1 FNC1 / Group Separator
    return f"01{gtin}21{serial}{GS}10{batch}{GS}17{expiry}"

Got: Encoded strings verified by scanning test prints with a GS1-certified verifier (ISO 15415 grade C or above). If fail: If scan verification fails, check print quality, quiet zones, and encoding order.

Step 5: Integrate with National Verification Systems

EU FMD — EMVS/NMVS Integration

MAH → Upload serial data → EU Hub → Distribute to National Systems (NMVS)
                                      ├── Germany (securPharm)
                                      ├── France (CTS)
                                      ├── Italy (AIFA)
                                      └── ... 31 markets

API operations:

  1. Upload (MAH → EU Hub): Batch upload of commissioned serial numbers
  2. Verify (Pharmacy → NMVS): Check serial status before dispensing
  3. Decommission (Pharmacy → NMVS): Mark as dispensed at point of sale
  4. Reactivate (MAH → NMVS): Reverse accidental decommission

DSCSA — Verification Router Service

Trading Partner A → VRS Request → Verification Router → MAH's VRS → Response

Implement a VRS responder endpoint:

# Simplified VRS endpoint (DSCSA verification)
from fastapi import FastAPI, HTTPException

app = FastAPI()

@app.get("/verify/{gtin}/{serial}/{lot}/{expiry}")
async def verify_product(gtin: str, serial: str, lot: str, expiry: str):
    """DSCSA product verification endpoint."""
    record = await lookup_serial(gtin, serial)
    if record is None:
        return {"verified": False, "reason": "SERIAL_NOT_FOUND"}
    if record.batch_lot != lot or str(record.expiry_date) != expiry:
        return {"verified": False, "reason": "DATA_MISMATCH"}
    if record.status != "ACTIVE":
        return {"verified": False, "reason": f"STATUS_{record.status}"}
    return {"verified": True, "status": record.status}

Got: Verification endpoints respond within 1 second with correct status. If fail: If national system upload fails, retry with exponential backoff and alert operations.

Step 6: Implement EPCIS Event Capture

Record supply chain events in EPCIS 2.0 format:

{
  "@context": "https://ref.gs1.org/standards/epcis/2.0.0/epcis-context.jsonld",
  "type": "ObjectEvent",
  "eventTime": "2025-03-15T10:30:00.000+01:00",
  "eventTimeZoneOffset": "+01:00",
  "epcList": ["urn:epc:id:sgtin:5012345.067890.A1B2C3D4E5"],
  "action": "ADD",
  "bizStep": "urn:epcglobal:cbv:bizstep:commissioning",
  "disposition": "urn:epcglobal:cbv:disp:active",
  "readPoint": {"id": "urn:epc:id:sgln:5012345.00001.0"},
  "bizLocation": {"id": "urn:epc:id:sgln:5012345.00001.0"}
}

Key business steps in the pharma supply chain:

  • commissioning — serial number assigned to physical unit
  • packing — aggregation into cases/pallets
  • shipping — departure from a location
  • receiving — arrival at a location
  • dispensing — supplied to patient (decommission trigger)

Got: Every status change generates an EPCIS event with correct timestamps and locations. If fail: Failed event capture must be queued and retried; never silently dropped.

Validation

  • Serial numbers are randomised and unique per GTIN
  • GS1 DataMatrix encoding verified by barcode scanner (ISO 15415 grade C+)
  • Aggregation hierarchy correctly links units → bundles → cases → pallets
  • National verification system integration tested (upload, verify, decommission)
  • EPCIS events captured for all business steps
  • Verification endpoint responds within 1 second
  • Exception handling covers upload failures, scan failures, and network errors

Pitfalls

  • Sequential serial numbers: EU FMD explicitly requires randomisation to prevent counterfeiting. Never use sequential numbering.
  • Aggregation errors: Disaggregation (breaking a case) must update the hierarchy. Shipping a case with wrong child associations causes verification failures downstream.
  • Timezone handling: EPCIS events must include timezone offset. Using local time without offset causes event ordering ambiguity across sites.
  • Late uploads: Serial data must be uploaded to national systems before product enters the supply chain. Late upload = product flagged as suspicious at pharmacy.
  • Ignoring exceptions: Legitimate products get flagged (false alerts) regularly. A process for investigating and resolving alerts is essential.

Related Skills

  • perform-csv-assessment — validate serialisation system as a computerised system
  • conduct-gxp-audit — audit serialisation processes
  • implement-audit-trail — audit trail for serialisation events
  • serialize-data-formats — general data serialisation (different domain, complementary concepts)
  • design-serialization-schema — schema design for data exchange formats

GitHub Repository

pjt222/agent-almanac
Pfad: i18n/caveman-lite/skills/implement-pharma-serialisation
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