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"""Neuroimaging visualization for Gradio.
This module provides visualization components for neuroimaging data:
- NiiVue WebGL-based 3D viewer
- Matplotlib-based 2D slice comparisons
See:
- https://github.com/niivue/niivue (NiiVue v0.65.0)
- docs/specs/07-hf-spaces-deployment.md
"""
from __future__ import annotations
import base64
import json
import uuid
from typing import TYPE_CHECKING
import matplotlib.pyplot as plt
import numpy as np
from stroke_deepisles_demo.metrics import load_nifti_as_array
if TYPE_CHECKING:
from pathlib import Path
from matplotlib.figure import Figure
# NiiVue version - updated to latest stable (Dec 2025)
NIIVUE_VERSION = "0.65.0"
NIIVUE_CDN_URL = f"https://unpkg.com/@niivue/niivue@{NIIVUE_VERSION}/dist/index.js"
def nifti_to_data_url(nifti_path: Path) -> str:
"""
Convert NIfTI file to base64 data URL for NiiVue.
Args:
nifti_path: Path to NIfTI file
Returns:
Data URL string
"""
# We load the raw bytes directly to avoid re-serialization overhead if possible
# But nibabel might be safer to ensure valid nifti if we were manipulating
# Here we just want the file content.
with nifti_path.open("rb") as f:
nifti_bytes = f.read()
nifti_b64 = base64.b64encode(nifti_bytes).decode("utf-8")
return f"data:application/octet-stream;base64,{nifti_b64}"
def get_slice_at_max_lesion(
mask_path: Path,
orientation: str = "axial",
) -> int:
"""
Find slice index with maximum lesion area.
Useful for displaying the most informative slice.
Args:
mask_path: Path to lesion mask NIfTI
orientation: Slice orientation ("axial", "coronal", "sagittal")
Returns:
Slice index with maximum lesion area
"""
data, _ = load_nifti_as_array(mask_path)
# Determine axes to sum over
# Default NIfTI (RAS+): x=sagittal, y=coronal, z=axial
# array indices: [x, y, z]
if orientation == "sagittal":
# Sum over y and z (axes 1, 2) -> result shape [x]
lesion_counts = np.sum(data > 0, axis=(1, 2))
elif orientation == "coronal":
# Sum over x and z (axes 0, 2) -> result shape [y]
lesion_counts = np.sum(data > 0, axis=(0, 2))
else: # axial
# Sum over x and y (axes 0, 1) -> result shape [z]
lesion_counts = np.sum(data > 0, axis=(0, 1))
max_slice = int(np.argmax(lesion_counts))
# If mask is empty, return middle slice
if np.max(lesion_counts) == 0:
if orientation == "sagittal":
return int(data.shape[0] // 2)
elif orientation == "coronal":
return int(data.shape[1] // 2)
else:
return int(data.shape[2] // 2)
return max_slice
def render_3panel_view(
nifti_path: Path,
mask_path: Path | None = None,
*,
mask_alpha: float = 0.5,
) -> Figure:
"""
Render axial/coronal/sagittal slices with optional mask overlay.
Args:
nifti_path: Path to base NIfTI volume
mask_path: Optional path to mask for overlay
mask_alpha: Transparency of mask overlay
Returns:
Matplotlib figure with 3-panel view
"""
data, _ = load_nifti_as_array(nifti_path)
mask_data = None
if mask_path:
mask_data, _ = load_nifti_as_array(mask_path)
# Get slices (middle by default, or max lesion if mask exists)
mid_x, mid_y, mid_z = data.shape[0] // 2, data.shape[1] // 2, data.shape[2] // 2
if mask_data is not None and np.any(mask_data > 0):
# Try to find a slice that intersects the lesion best
# Simplified: use center of mass of lesion
coords = np.argwhere(mask_data > 0)
center = coords.mean(axis=0).astype(int)
mid_x, mid_y, mid_z = center[0], center[1], center[2]
# Create figure
fig, axes = plt.subplots(1, 3, figsize=(15, 5))
fig.patch.set_facecolor("black")
# Axial (XY plane, Z fixed) - often needs rotation 90 deg
# NIfTI data[x, y, z]. To display standard axial:
# usually imshow(data[:, :, z].T, origin='lower')
ax_slice = np.rot90(data[:, :, mid_z])
axes[0].imshow(ax_slice, cmap="gray")
axes[0].set_title(f"Axial (z={mid_z})", color="white")
if mask_data is not None:
m_slice = np.rot90(mask_data[:, :, mid_z])
axes[0].imshow(
np.ma.masked_where(m_slice == 0, m_slice), # type: ignore[no-untyped-call]
cmap="Reds",
alpha=mask_alpha,
vmin=0,
vmax=1,
)
# Coronal (XZ plane, Y fixed)
cor_slice = np.rot90(data[:, mid_y, :])
axes[1].imshow(cor_slice, cmap="gray")
axes[1].set_title(f"Coronal (y={mid_y})", color="white")
if mask_data is not None:
m_slice = np.rot90(mask_data[:, mid_y, :])
axes[1].imshow(
np.ma.masked_where(m_slice == 0, m_slice), # type: ignore[no-untyped-call]
cmap="Reds",
alpha=mask_alpha,
vmin=0,
vmax=1,
)
# Sagittal (YZ plane, X fixed)
sag_slice = np.rot90(data[mid_x, :, :])
axes[2].imshow(sag_slice, cmap="gray")
axes[2].set_title(f"Sagittal (x={mid_x})", color="white")
if mask_data is not None:
m_slice = np.rot90(mask_data[mid_x, :, :])
axes[2].imshow(
np.ma.masked_where(m_slice == 0, m_slice), # type: ignore[no-untyped-call]
cmap="Reds",
alpha=mask_alpha,
vmin=0,
vmax=1,
)
for ax in axes:
ax.axis("off")
plt.tight_layout()
return fig
def render_slice_comparison(
dwi_path: Path,
prediction_path: Path,
ground_truth_path: Path | None = None,
*,
slice_idx: int | None = None,
orientation: str = "axial",
) -> Figure:
"""
Render side-by-side comparison of DWI, prediction, and ground truth.
Args:
dwi_path: Path to DWI NIfTI
prediction_path: Path to predicted mask NIfTI
ground_truth_path: Optional path to ground truth mask
slice_idx: Slice index (default: max lesion or middle)
orientation: One of "axial", "coronal", "sagittal"
Returns:
Matplotlib figure with comparison view
"""
dwi_data, _ = load_nifti_as_array(dwi_path)
pred_data, _ = load_nifti_as_array(prediction_path)
gt_data = None
if ground_truth_path:
gt_data, _ = load_nifti_as_array(ground_truth_path)
# Determine slice index
if slice_idx is None:
# Use prediction to find best slice
slice_idx = get_slice_at_max_lesion(prediction_path, orientation)
# Extract slices based on orientation
# Assuming data[x, y, z]
if orientation == "sagittal":
# X fixed
d_slice = np.rot90(dwi_data[slice_idx, :, :])
p_slice = np.rot90(pred_data[slice_idx, :, :])
g_slice = np.rot90(gt_data[slice_idx, :, :]) if gt_data is not None else None
elif orientation == "coronal":
# Y fixed
d_slice = np.rot90(dwi_data[:, slice_idx, :])
p_slice = np.rot90(pred_data[:, slice_idx, :])
g_slice = np.rot90(gt_data[:, slice_idx, :]) if gt_data is not None else None
else:
# Z fixed (axial)
d_slice = np.rot90(dwi_data[:, :, slice_idx])
p_slice = np.rot90(pred_data[:, :, slice_idx])
g_slice = np.rot90(gt_data[:, :, slice_idx]) if gt_data is not None else None
# Plotting
num_plots = 3 if gt_data is not None else 2
fig, axes = plt.subplots(1, num_plots, figsize=(5 * num_plots, 5))
fig.patch.set_facecolor("black")
if num_plots == 2:
axes = np.array(axes) # handle single case if needed, but subplots(1,2) returns array
# 1. DWI
axes[0].imshow(d_slice, cmap="gray")
axes[0].set_title("DWI Input", color="white")
# 2. Prediction
axes[1].imshow(d_slice, cmap="gray")
axes[1].imshow(
np.ma.masked_where(p_slice == 0, p_slice), # type: ignore[no-untyped-call]
cmap="Reds",
alpha=0.5,
vmin=0,
vmax=1,
)
axes[1].set_title("Prediction", color="white")
# 3. GT (if available)
if gt_data is not None:
axes[2].imshow(d_slice, cmap="gray")
axes[2].imshow(
np.ma.masked_where(g_slice == 0, g_slice), # type: ignore[no-untyped-call]
cmap="Greens",
alpha=0.5,
vmin=0,
vmax=1,
)
axes[2].set_title("Ground Truth", color="white")
for ax in axes:
ax.axis("off")
plt.tight_layout()
return fig
def create_niivue_html(
volume_url: str,
mask_url: str | None = None,
*,
height: int = 400,
) -> str:
"""
Create HTML/JS for NiiVue viewer.
This function generates an HTML snippet with embedded JavaScript for
NiiVue WebGL-based neuroimaging visualization. Each invocation creates
a unique canvas ID to avoid conflicts when multiple viewers are rendered.
Args:
volume_url: Data URL or URL to volume NIfTI file
mask_url: Optional data URL or URL to mask NIfTI file
height: Viewer height in pixels
Returns:
HTML string with embedded NiiVue viewer
Note:
The JavaScript uses dynamic import() which works in modern browsers
and Gradio's HTML component. Each viewer gets a unique ID to support
multiple simultaneous viewers.
"""
# Generate unique ID for this viewer instance
viewer_id = uuid.uuid4().hex[:8]
canvas_id = f"niivue-canvas-{viewer_id}"
container_id = f"niivue-container-{viewer_id}"
# Safely serialize URLs for JavaScript (prevents XSS)
volume_url_js = json.dumps(volume_url)
# Build mask volume configuration if provided
mask_js = ""
if mask_url:
mask_url_js = json.dumps(mask_url)
mask_js = f"""
volumes.push({{
url: {mask_url_js},
colorMap: 'red',
opacity: 0.5
}});"""
# JavaScript that initializes NiiVue
# Using an IIFE pattern that works better in Gradio's HTML component
return f"""
<div id="{container_id}" style="width:100%; height:{height}px; background:#000; border-radius:8px; position:relative;">
<canvas id="{canvas_id}" style="width:100%; height:100%;"></canvas>
</div>
<script type="module">
// NiiVue initialization for viewer {viewer_id}
(async function() {{
try {{
// Check if browser supports WebGL2
const testCanvas = document.createElement('canvas');
const gl = testCanvas.getContext('webgl2');
if (!gl) {{
document.getElementById('{container_id}').innerHTML =
'<div style="color:#fff;padding:20px;text-align:center;">' +
'WebGL2 not supported. Please use a modern browser.</div>';
return;
}}
// Dynamically import NiiVue
const niivueModule = await import('{NIIVUE_CDN_URL}');
const Niivue = niivueModule.Niivue;
// Initialize NiiVue with options
const nv = new Niivue({{
logging: false,
show3Dcrosshair: true,
textHeight: 0.04,
backColor: [0, 0, 0, 1],
crosshairColor: [0.2, 0.8, 0.2, 1]
}});
// Attach to canvas
await nv.attachToCanvas(document.getElementById('{canvas_id}'));
// Prepare volumes
const volumes = [{{
url: {volume_url_js},
name: 'input.nii.gz'
}}];{mask_js}
// Load volumes
await nv.loadVolumes(volumes);
// Configure view: multiplanar + 3D
nv.setSliceType(nv.sliceTypeMultiplanar);
if (typeof nv.setMultiplanarLayout === 'function') {{
nv.setMultiplanarLayout(2);
}}
nv.opts.show3Dcrosshair = true;
nv.setRenderAzimuthElevation(120, 10);
nv.drawScene();
console.log('NiiVue viewer {viewer_id} initialized successfully');
}} catch (error) {{
console.error('NiiVue initialization error:', error);
document.getElementById('{container_id}').innerHTML =
'<div style="color:#fff;padding:20px;text-align:center;">' +
'Error loading viewer: ' + error.message + '</div>';
}}
}})();
</script>
"""
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