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pydicom

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pydicom은 DICOM 의료 영상 파일을 읽고, 쓰고, 조작하는 Python 라이브러리입니다. 개발자가 픽셀 데이터를 추출하고, 메타데이터와 태그를 처리하며, 파일을 익명화하고, CT, MRI 및 기타 영상 데이터의 형식을 변환할 수 있게 합니다. 이 스킬은 의료 영상 분석, PACS 시스템, 방사선 워크플로우 작업에 사용하세요.

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npx skills add K-Dense-AI/claude-scientific-skills -a claude-code
플러그인 명령대체
/plugin add https://github.com/K-Dense-AI/claude-scientific-skills
Git 클론대체
git clone https://github.com/K-Dense-AI/claude-scientific-skills.git ~/.claude/skills/pydicom

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문서

Pydicom

Overview

Pydicom is a pure Python package for working with DICOM files, the standard format for medical imaging data. This skill provides guidance on reading, writing, and manipulating DICOM files, including working with pixel data, metadata, and various compression formats.

When to Use This Skill

Use this skill when working with:

  • Medical imaging files (CT, MRI, X-ray, ultrasound, PET, etc.)
  • DICOM datasets requiring metadata extraction or modification
  • Pixel data extraction and image processing from medical scans
  • DICOM anonymization for research or data sharing
  • Converting DICOM files to standard image formats
  • Compressed DICOM data requiring decompression
  • DICOM sequences and structured reports
  • Multi-slice volume reconstruction
  • PACS (Picture Archiving and Communication System) integration

Installation

Install pydicom and common dependencies:

uv pip install pydicom
uv pip install pillow  # For image format conversion
uv pip install numpy   # For pixel array manipulation
uv pip install matplotlib  # For visualization

For handling compressed DICOM files, additional packages may be needed:

uv pip install pylibjpeg pylibjpeg-libjpeg pylibjpeg-openjpeg  # JPEG compression
uv pip install python-gdcm  # Alternative compression handler

Core Workflows

Reading DICOM Files

Read a DICOM file using pydicom.dcmread():

import pydicom

# Read a DICOM file
ds = pydicom.dcmread('path/to/file.dcm')

# Access metadata
print(f"Patient Name: {ds.PatientName}")
print(f"Study Date: {ds.StudyDate}")
print(f"Modality: {ds.Modality}")

# Display all elements
print(ds)

Key points:

  • dcmread() returns a Dataset object
  • Access data elements using attribute notation (e.g., ds.PatientName) or tag notation (e.g., ds[0x0010, 0x0010])
  • Use ds.file_meta to access file metadata like Transfer Syntax UID
  • Handle missing attributes with getattr(ds, 'AttributeName', default_value) or hasattr(ds, 'AttributeName')

Working with Pixel Data

Extract and manipulate image data from DICOM files:

import pydicom
import numpy as np
import matplotlib.pyplot as plt

# Read DICOM file
ds = pydicom.dcmread('image.dcm')

# Get pixel array (requires numpy)
pixel_array = ds.pixel_array

# Image information
print(f"Shape: {pixel_array.shape}")
print(f"Data type: {pixel_array.dtype}")
print(f"Rows: {ds.Rows}, Columns: {ds.Columns}")

# Apply windowing for display (CT/MRI)
if hasattr(ds, 'WindowCenter') and hasattr(ds, 'WindowWidth'):
    from pydicom.pixel_data_handlers.util import apply_voi_lut
    windowed_image = apply_voi_lut(pixel_array, ds)
else:
    windowed_image = pixel_array

# Display image
plt.imshow(windowed_image, cmap='gray')
plt.title(f"{ds.Modality} - {ds.StudyDescription}")
plt.axis('off')
plt.show()

Working with color images:

# RGB images have shape (rows, columns, 3)
if ds.PhotometricInterpretation == 'RGB':
    rgb_image = ds.pixel_array
    plt.imshow(rgb_image)
elif ds.PhotometricInterpretation == 'YBR_FULL':
    from pydicom.pixel_data_handlers.util import convert_color_space
    rgb_image = convert_color_space(ds.pixel_array, 'YBR_FULL', 'RGB')
    plt.imshow(rgb_image)

Multi-frame images (videos/series):

# For multi-frame DICOM files
if hasattr(ds, 'NumberOfFrames') and ds.NumberOfFrames > 1:
    frames = ds.pixel_array  # Shape: (num_frames, rows, columns)
    print(f"Number of frames: {frames.shape[0]}")

    # Display specific frame
    plt.imshow(frames[0], cmap='gray')

Converting DICOM to Image Formats

Use the provided dicom_to_image.py script or convert manually:

from PIL import Image
import pydicom
import numpy as np

ds = pydicom.dcmread('input.dcm')
pixel_array = ds.pixel_array

# Normalize to 0-255 range
if pixel_array.dtype != np.uint8:
    pixel_array = ((pixel_array - pixel_array.min()) /
                   (pixel_array.max() - pixel_array.min()) * 255).astype(np.uint8)

# Save as PNG
image = Image.fromarray(pixel_array)
image.save('output.png')

Use the script: python scripts/dicom_to_image.py input.dcm output.png

Modifying Metadata

Modify DICOM data elements:

import pydicom
from datetime import datetime

ds = pydicom.dcmread('input.dcm')

# Modify existing elements
ds.PatientName = "Doe^John"
ds.StudyDate = datetime.now().strftime('%Y%m%d')
ds.StudyDescription = "Modified Study"

# Add new elements
ds.SeriesNumber = 1
ds.SeriesDescription = "New Series"

# Remove elements
if hasattr(ds, 'PatientComments'):
    delattr(ds, 'PatientComments')
# Or using del
if 'PatientComments' in ds:
    del ds.PatientComments

# Save modified file
ds.save_as('modified.dcm')

Anonymizing DICOM Files

Remove or replace patient identifiable information:

import pydicom
from datetime import datetime

ds = pydicom.dcmread('input.dcm')

# Tags commonly containing PHI (Protected Health Information)
tags_to_anonymize = [
    'PatientName', 'PatientID', 'PatientBirthDate',
    'PatientSex', 'PatientAge', 'PatientAddress',
    'InstitutionName', 'InstitutionAddress',
    'ReferringPhysicianName', 'PerformingPhysicianName',
    'OperatorsName', 'StudyDescription', 'SeriesDescription',
]

# Remove or replace sensitive data
for tag in tags_to_anonymize:
    if hasattr(ds, tag):
        if tag in ['PatientName', 'PatientID']:
            setattr(ds, tag, 'ANONYMOUS')
        elif tag == 'PatientBirthDate':
            setattr(ds, tag, '19000101')
        else:
            delattr(ds, tag)

# Update dates to maintain temporal relationships
if hasattr(ds, 'StudyDate'):
    # Shift dates by a random offset
    ds.StudyDate = '20000101'

# Keep pixel data intact
ds.save_as('anonymized.dcm')

Use the provided script: python scripts/anonymize_dicom.py input.dcm output.dcm

Writing DICOM Files

Create DICOM files from scratch:

import pydicom
from pydicom.dataset import Dataset, FileDataset
from datetime import datetime
import numpy as np

# Create file meta information
file_meta = Dataset()
file_meta.MediaStorageSOPClassUID = pydicom.uid.generate_uid()
file_meta.MediaStorageSOPInstanceUID = pydicom.uid.generate_uid()
file_meta.TransferSyntaxUID = pydicom.uid.ExplicitVRLittleEndian

# Create the FileDataset instance
ds = FileDataset('new_dicom.dcm', {}, file_meta=file_meta, preamble=b"\0" * 128)

# Add required DICOM elements
ds.PatientName = "Test^Patient"
ds.PatientID = "123456"
ds.Modality = "CT"
ds.StudyDate = datetime.now().strftime('%Y%m%d')
ds.StudyTime = datetime.now().strftime('%H%M%S')
ds.ContentDate = ds.StudyDate
ds.ContentTime = ds.StudyTime

# Add image-specific elements
ds.SamplesPerPixel = 1
ds.PhotometricInterpretation = "MONOCHROME2"
ds.Rows = 512
ds.Columns = 512
ds.BitsAllocated = 16
ds.BitsStored = 16
ds.HighBit = 15
ds.PixelRepresentation = 0

# Create pixel data
pixel_array = np.random.randint(0, 4096, (512, 512), dtype=np.uint16)
ds.PixelData = pixel_array.tobytes()

# Add required UIDs
ds.SOPClassUID = pydicom.uid.CTImageStorage
ds.SOPInstanceUID = file_meta.MediaStorageSOPInstanceUID
ds.SeriesInstanceUID = pydicom.uid.generate_uid()
ds.StudyInstanceUID = pydicom.uid.generate_uid()

# Save the file
ds.save_as('new_dicom.dcm')

Compression and Decompression

Handle compressed DICOM files:

import pydicom

# Read compressed DICOM file
ds = pydicom.dcmread('compressed.dcm')

# Check transfer syntax
print(f"Transfer Syntax: {ds.file_meta.TransferSyntaxUID}")
print(f"Transfer Syntax Name: {ds.file_meta.TransferSyntaxUID.name}")

# Decompress and save as uncompressed
ds.decompress()
ds.save_as('uncompressed.dcm', write_like_original=False)

# Or compress when saving (requires appropriate encoder)
ds_uncompressed = pydicom.dcmread('uncompressed.dcm')
ds_uncompressed.compress(pydicom.uid.JPEGBaseline8Bit)
ds_uncompressed.save_as('compressed_jpeg.dcm')

Common transfer syntaxes:

  • ExplicitVRLittleEndian - Uncompressed, most common
  • JPEGBaseline8Bit - JPEG lossy compression
  • JPEGLossless - JPEG lossless compression
  • JPEG2000Lossless - JPEG 2000 lossless
  • RLELossless - Run-Length Encoding lossless

See references/transfer_syntaxes.md for complete list.

Working with DICOM Sequences

Handle nested data structures:

import pydicom

ds = pydicom.dcmread('file.dcm')

# Access sequences
if 'ReferencedStudySequence' in ds:
    for item in ds.ReferencedStudySequence:
        print(f"Referenced SOP Instance UID: {item.ReferencedSOPInstanceUID}")

# Create a sequence
from pydicom.sequence import Sequence

sequence_item = Dataset()
sequence_item.ReferencedSOPClassUID = pydicom.uid.CTImageStorage
sequence_item.ReferencedSOPInstanceUID = pydicom.uid.generate_uid()

ds.ReferencedImageSequence = Sequence([sequence_item])

Processing DICOM Series

Work with multiple related DICOM files:

import pydicom
import numpy as np
from pathlib import Path

# Read all DICOM files in a directory
dicom_dir = Path('dicom_series/')
slices = []

for file_path in dicom_dir.glob('*.dcm'):
    ds = pydicom.dcmread(file_path)
    slices.append(ds)

# Sort by slice location or instance number
slices.sort(key=lambda x: float(x.ImagePositionPatient[2]))
# Or: slices.sort(key=lambda x: int(x.InstanceNumber))

# Create 3D volume
volume = np.stack([s.pixel_array for s in slices])
print(f"Volume shape: {volume.shape}")  # (num_slices, rows, columns)

# Get spacing information for proper scaling
pixel_spacing = slices[0].PixelSpacing  # [row_spacing, col_spacing]
slice_thickness = slices[0].SliceThickness
print(f"Voxel size: {pixel_spacing[0]}x{pixel_spacing[1]}x{slice_thickness} mm")

Helper Scripts

This skill includes utility scripts in the scripts/ directory:

anonymize_dicom.py

Anonymize DICOM files by removing or replacing Protected Health Information (PHI).

python scripts/anonymize_dicom.py input.dcm output.dcm

dicom_to_image.py

Convert DICOM files to common image formats (PNG, JPEG, TIFF).

python scripts/dicom_to_image.py input.dcm output.png
python scripts/dicom_to_image.py input.dcm output.jpg --format JPEG

extract_metadata.py

Extract and display DICOM metadata in a readable format.

python scripts/extract_metadata.py file.dcm
python scripts/extract_metadata.py file.dcm --output metadata.txt

Reference Materials

Detailed reference information is available in the references/ directory:

  • common_tags.md: Comprehensive list of commonly used DICOM tags organized by category (Patient, Study, Series, Image, etc.)
  • transfer_syntaxes.md: Complete reference of DICOM transfer syntaxes and compression formats

Common Issues and Solutions

Issue: "Unable to decode pixel data"

  • Solution: Install additional compression handlers: uv pip install pylibjpeg pylibjpeg-libjpeg python-gdcm

Issue: "AttributeError" when accessing tags

  • Solution: Check if attribute exists with hasattr(ds, 'AttributeName') or use ds.get('AttributeName', default)

Issue: Incorrect image display (too dark/bright)

  • Solution: Apply VOI LUT windowing: apply_voi_lut(pixel_array, ds) or manually adjust with WindowCenter and WindowWidth

Issue: Memory issues with large series

  • Solution: Process files iteratively, use memory-mapped arrays, or downsample images

Best Practices

  1. Always check for required attributes before accessing them using hasattr() or get()
  2. Preserve file metadata when modifying files by using save_as() with write_like_original=True
  3. Use Transfer Syntax UIDs to understand compression format before processing pixel data
  4. Handle exceptions when reading files from untrusted sources
  5. Apply proper windowing (VOI LUT) for medical image visualization
  6. Maintain spatial information (pixel spacing, slice thickness) when processing 3D volumes
  7. Verify anonymization thoroughly before sharing medical data
  8. Use UIDs correctly - generate new UIDs when creating new instances, preserve them when modifying

Documentation

Official pydicom documentation: https://pydicom.github.io/pydicom/dev/

GitHub 저장소

K-Dense-AI/claude-scientific-skills
경로: skills/pydicom
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agent-skillsai-scientistbioinformaticschemoinformaticsclaudeclaude-skills

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