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Self-contained: no wound_classifier package install required. The model
architecture and transforms are inlined here so this file plus the .pt
checkpoint and requirements.txt are everything the Space needs.
If the architecture or transform here drifts from
src/wound_classifier/{modeling/models.py, features.py} the Space and the
training pipeline will silently disagree. Keep them in sync.
Theming approximates Hôpital Montfort (Ottawa) brand colors, sourced from
the live hopitalmontfort.com stylesheet: primary "Montfort blue" #00729a,
turquoise accent #47c9cd, warm cream surface #f1ede5.
"""
from __future__ import annotations
from pathlib import Path
import gradio as gr
import torch
from PIL import Image
from torch import nn
from torchvision import transforms
from torchvision.models import efficientnet_b0
CKPT_PATH = Path(__file__).parent / "cv_baseline_fold5_best.pt"
IMAGE_SIZE = 224
IMAGENET_MEAN = (0.485, 0.456, 0.406)
IMAGENET_STD = (0.229, 0.224, 0.225)
IDX_TO_CLASS = ["D", "P", "S", "V"]
CLASS_NAMES: dict[str, dict[str, str]] = {
"en": {
"D": "Diabetic ulcer",
"P": "Pressure ulcer",
"S": "Surgical wound",
"V": "Venous ulcer",
},
"fr": {
"D": "Ulcère diabétique",
"P": "Escarre",
"S": "Plaie chirurgicale",
"V": "Ulcère veineux",
},
}
LOW_CONFIDENCE_THRESHOLD = 0.5
# ---------- Localized strings ---------------------------------------------------
SPACE_URL = "https://huggingface.co/spaces/jbobym/wound-classifier"
TITLE: dict[str, str] = {
"en": (
"# Chronic Wound Classifier\n"
"*Developed, trained, and deployed by **John Boby Mesadieu**.*\n\n"
"A model I trained to look at a wound photo and guess which of four types it is. "
"It's right roughly 8 times out of 10; this page also tells you when not to trust it.\n\n"
f"**Share this demo:** [{SPACE_URL}]({SPACE_URL})"
),
"fr": (
"# Classification des plaies chroniques\n"
"*Conçu, entraîné et déployé par **John Boby Mesadieu**.*\n\n"
"Un modèle que j'ai entraîné pour regarder une photo de plaie et deviner duquel des quatre "
"types il s'agit. Il a raison environ 8 fois sur 10 ; cette page vous dit aussi quand ne "
"pas lui faire confiance.\n\n"
f"**Partager cette démo :** [{SPACE_URL}]({SPACE_URL})"
),
}
DESCRIPTION: dict[str, str] = {
"en": """\
Upload a photo of a wound and the model picks one of four types (diabetic, pressure, surgical, or
venous), with a confidence percentage for each.
A few things to know before you try it:
- **Centre the wound in the photo.** The model only looks at a square in the middle of the image;
anything in the corners gets cropped out.
- **JPEG or PNG. That's it.**
- **Only upload wound photos.** The model has to pick one of the four types. If you give it
something else, it will still call it a wound. Watch the confidence percentage: if it comes back
under 50%, the model is probably guessing.
- **Pressure ulcers are the model's weak spot.** It gets them right roughly 4 times out of 10. When
it says Pressure, take the answer with a grain of salt.
This is a research demo, not a medical device. It doesn't diagnose, triage, or replace a
clinician's judgement. The *Approach* section below has the methodology and the headline accuracy.
""",
"fr": """\
Téléversez une photo de plaie ; le modèle choisit l'un de quatre types (diabétique, escarre,
chirurgicale ou veineux) avec un pourcentage de confiance pour chacun.
À savoir avant d'essayer :
- **Centrez la plaie dans la photo.** Le modèle ne regarde qu'un carré au milieu de l'image ; tout
ce qui se trouve dans les coins est coupé.
- **JPEG ou PNG. C'est tout.**
- **Téléversez seulement des photos de plaie.** Le modèle doit choisir l'un des quatre types. Si
vous lui donnez autre chose, il l'appellera quand même une plaie. Surveillez le pourcentage de
confiance : sous 50 %, le modèle devine probablement.
- **L'escarre est le point faible du modèle.** Il la reconnaît correctement environ 4 fois sur 10.
Quand il dit Escarre, prenez la réponse avec précaution.
Ceci est une démonstration de recherche, pas un dispositif médical. Le modèle ne pose pas de
diagnostic, ne fait pas de triage et ne remplace pas le jugement clinique. La section *Approche*
ci-dessous donne la méthodologie et l'exactitude principale.
""",
}
ARTICLE: dict[str, str] = {
"en": """\
### Approach
I trained an image classifier (EfficientNet-B0) on the AZH Chronic Wound Database, a public
research dataset of clinical wound photos. The training was set up so that the same patient's
photos never appeared in both the training and test sets; that detail matters more than it sounds,
because models on this dataset can otherwise inflate their accuracy by quietly memorising patients
instead of learning what wounds actually look like.
On the held-out test set of 184 photos, the version of the model running here gets the wound type
right 81 times out of 100. As a sanity check, I trained nine other versions of the same model on
slightly different slices of the data and averaged their predictions; that combined version scored
80 out of 100 on the same test, which suggests the headline number is not a fluke.
### Out of scope
Not for clinical decision-making. No claim of diagnostic accuracy on real patient cohorts. No
fairness audit across skin tones, which is a known gap.
### Author
John Boby Mesadieu.
### Dataset citation
Anisuzzaman et al. 2022, *Multi-modal wound classification using wound image and location by deep
neural network*, Sci. Rep. 12:20057.
""",
"fr": """\
### Approche
J'ai entraîné un classifieur d'images (EfficientNet-B0) sur la AZH Chronic Wound Database, un jeu
de données public de photos cliniques de plaies. L'entraînement a été configuré pour que les
photos d'un même patient n'apparaissent jamais à la fois dans le jeu d'entraînement et dans le jeu
de test ; ce détail compte, parce que les modèles entraînés sur ce jeu de données peuvent
autrement gonfler leur exactitude en mémorisant discrètement des patients plutôt qu'en apprenant à
quoi ressemble une plaie.
Sur le jeu de test retenu de 184 photos, la version du modèle déployée ici trouve le bon type de
plaie 81 fois sur 100. Comme contrôle, j'ai entraîné neuf autres versions du même modèle sur des
découpes légèrement différentes des données et fait la moyenne de leurs prédictions ; cette
version combinée a obtenu 80 sur 100 sur le même test, ce qui suggère que le chiffre principal
n'est pas un coup de chance.
### Hors champ
Pas pour la décision clinique. Aucune prétention d'exactitude diagnostique sur de vraies cohortes
de patients. Aucun audit d'équité par teinte de peau, ce qui constitue une limite connue.
### Auteur
John Boby Mesadieu.
### Référence du jeu de données
Anisuzzaman et coll. 2022, *Multi-modal wound classification using wound image and location by
deep neural network*, Sci. Rep. 12:20057.
""",
}
LABELS: dict[str, dict[str, str]] = {
"en": {
"lang_radio": "Language / Langue",
"image_input": "Wound photograph (close-up, centered)",
"label_output": "Predicted wound type",
"notes_output": "Notes",
"submit": "Classify",
"clear": "Clear",
"share": "Share this prediction",
},
"fr": {
"lang_radio": "Language / Langue",
"image_input": "Photographie de la plaie (gros plan, centrée)",
"label_output": "Type de plaie prédit",
"notes_output": "Remarques",
"submit": "Classer",
"clear": "Effacer",
"share": "Partager cette prédiction",
},
}
NOTE_LOW_CONFIDENCE: dict[str, str] = {
"en": (
"**Low confidence** (top class {top_label} at {top_pct}). "
"Probably one of two things: the photo isn't a clear close-up of a wound, or it is a "
"wound but not one of the four the model knows. Either way, the model still has to pick, "
"so do not lean on this answer."
),
"fr": (
"**Faible confiance** (classe principale {top_label} à {top_pct}). "
"L'une des deux choses, probablement : la photo n'est pas un gros plan clair d'une plaie, "
"ou c'est bien une plaie mais pas l'un des quatre types que le modèle connaît. Dans les "
"deux cas, le modèle est obligé de choisir quand même, alors ne vous appuyez pas sur "
"cette réponse."
),
}
NOTE_PRESSURE: dict[str, str] = {
"en": (
"**Pressure ulcers are the model's weak spot.** "
"It gets them right roughly 4 times out of 10. "
"When it says Pressure, take the answer with a grain of salt."
),
"fr": (
"**L'escarre est le point faible du modèle.** "
"Il la reconnaît correctement environ 4 fois sur 10. "
"Quand il dit Escarre, prenez la réponse avec précaution."
),
}
# ---------- Model loading -------------------------------------------------------
def _build_model(num_classes: int = 4) -> nn.Module:
model: nn.Module = efficientnet_b0(weights=None)
in_features = model.classifier[1].in_features # type: ignore[index, union-attr]
model.classifier = nn.Sequential(
nn.Dropout(p=0.2, inplace=True),
nn.Linear(in_features, num_classes),
)
return model
def _load_model(path: Path) -> nn.Module:
ckpt = torch.load(path, map_location="cpu", weights_only=False)
model = _build_model(num_classes=4)
model.load_state_dict(ckpt["state_dict"])
model.eval()
return model
def _build_transform() -> transforms.Compose:
return transforms.Compose(
[
transforms.Resize(IMAGE_SIZE),
transforms.CenterCrop(IMAGE_SIZE),
transforms.ToTensor(),
transforms.Normalize(mean=IMAGENET_MEAN, std=IMAGENET_STD),
]
)
MODEL = _load_model(CKPT_PATH)
TRANSFORM = _build_transform()
def _lang_code(choice: str) -> str:
return "fr" if choice == "Français" else "en"
def _format_pct(value: float, lang: str) -> str:
pct = f"{value:.0%}"
# Use French non-breaking space + lowercase percent? Standard French formatting.
return pct.replace(".", ",") if lang == "fr" else pct
def classify(image: Image.Image | None, language_choice: str) -> tuple[dict[str, float], str]:
if image is None:
return {}, ""
lang = _lang_code(language_choice)
rgb = image.convert("RGB")
x = TRANSFORM(rgb).unsqueeze(0)
with torch.inference_mode():
logits = MODEL(x)
probs = torch.softmax(logits, dim=1).squeeze(0).numpy()
name_map = CLASS_NAMES[lang]
label_probs = {name_map[IDX_TO_CLASS[i]]: float(probs[i]) for i in range(4)}
top_label, top_prob = max(label_probs.items(), key=lambda kv: kv[1])
top_letter = next(letter for letter, name in name_map.items() if name == top_label)
notes: list[str] = []
if top_prob < LOW_CONFIDENCE_THRESHOLD:
notes.append(
NOTE_LOW_CONFIDENCE[lang].format(
top_label=top_label, top_pct=_format_pct(top_prob, lang)
)
)
if top_letter == "P":
notes.append(NOTE_PRESSURE[lang])
return label_probs, "\n\n".join(notes)
# ---------- UI ------------------------------------------------------------------
# Custom theme using Hôpital Montfort brand colors (extracted from their stylesheet):
# primary "Montfort blue" #00729a, turquoise accent #47c9cd, warm cream #f1ede5.
montfort_blue = gr.themes.Color(
name="montfort_blue",
c50="#eef7fa",
c100="#c6eafa",
c200="#9bd9ed",
c300="#6ec5dd",
c400="#3aa5c4",
c500="#00729a",
c600="#005f81",
c700="#004d68",
c800="#003a4f",
c900="#002836",
c950="#001a25",
)
montfort_turquoise = gr.themes.Color(
name="montfort_turquoise",
c50="#e6fbfb",
c100="#c6f4f5",
c200="#9eeaeb",
c300="#73dde0",
c400="#47c9cd",
c500="#23b6ba",
c600="#1a9498",
c700="#147576",
c800="#0f5859",
c900="#0a3c3d",
c950="#062323",
)
theme = gr.themes.Soft(
primary_hue=montfort_blue,
secondary_hue=montfort_turquoise,
neutral_hue=gr.themes.colors.stone,
font=[gr.themes.GoogleFont("Inter"), "system-ui", "sans-serif"],
).set(
# Light mode (Montfort cream surface, white panels)
body_background_fill="#f1ede5",
block_background_fill="white",
block_border_color="#dee2e6",
button_primary_background_fill="#00729a",
button_primary_background_fill_hover="#005f81",
button_primary_text_color="white",
# Dark mode (keep the Montfort identity — deep blue surface, lighter blue panels)
body_background_fill_dark="#002836",
block_background_fill_dark="#003a4f",
block_border_color_dark="#005f81",
button_primary_background_fill_dark="#47c9cd",
button_primary_background_fill_hover_dark="#23b6ba",
button_primary_text_color_dark="#001a25",
body_text_color_dark="#eef7fa",
block_label_text_color_dark="#c6eafa",
block_title_text_color_dark="#eef7fa",
)
def _localize_components(
language_choice: str,
) -> tuple[gr.Markdown, gr.Markdown, gr.Image, gr.Label, gr.Markdown, gr.Button, gr.Button]:
lang = _lang_code(language_choice)
labels = LABELS[lang]
return (
gr.Markdown(value=TITLE[lang]),
gr.Markdown(value=DESCRIPTION[lang]),
gr.Image(label=labels["image_input"]),
gr.Label(label=labels["label_output"]),
gr.Markdown(value="", label=labels["notes_output"]),
gr.Button(value=labels["submit"]),
gr.Button(value=labels["clear"]),
)
with gr.Blocks(theme=theme, title="Chronic Wound Classifier · Hôpital Montfort demo") as demo:
language_radio = gr.Radio(
choices=["English", "Français"],
value="English",
label=LABELS["en"]["lang_radio"],
interactive=True,
)
title_md = gr.Markdown(TITLE["en"])
description_md = gr.Markdown(DESCRIPTION["en"])
with gr.Row():
with gr.Column():
image_input = gr.Image(type="pil", label=LABELS["en"]["image_input"])
with gr.Row():
submit_btn = gr.Button(LABELS["en"]["submit"], variant="primary")
clear_btn = gr.Button(LABELS["en"]["clear"])
with gr.Column():
label_output = gr.Label(num_top_classes=4, label=LABELS["en"]["label_output"])
notes_output = gr.Markdown(label=LABELS["en"]["notes_output"])
share_btn = gr.DeepLinkButton(value=LABELS["en"]["share"], icon=None)
article_md = gr.Markdown(ARTICLE["en"])
submit_btn.click(
classify,
inputs=[image_input, language_radio],
outputs=[label_output, notes_output],
)
image_input.change(
classify,
inputs=[image_input, language_radio],
outputs=[label_output, notes_output],
)
clear_btn.click(
lambda: (None, {}, ""),
inputs=[],
outputs=[image_input, label_output, notes_output],
)
def _on_language_change(
language_choice: str, current_image: Image.Image | None
) -> tuple[dict, dict, dict, dict, dict, dict, dict, dict, str]:
lang = _lang_code(language_choice)
labels = LABELS[lang]
# Re-run inference so the on-screen probability labels switch languages too.
new_probs, new_notes = classify(current_image, language_choice)
return (
gr.update(value=TITLE[lang]),
gr.update(value=DESCRIPTION[lang]),
gr.update(value=ARTICLE[lang]),
gr.update(label=labels["image_input"]),
gr.update(label=labels["label_output"], value=new_probs),
gr.update(value=labels["submit"]),
gr.update(value=labels["clear"]),
gr.update(value=labels["share"]),
new_notes,
)
language_radio.change(
_on_language_change,
inputs=[language_radio, image_input],
outputs=[
title_md,
description_md,
article_md,
image_input,
label_output,
submit_btn,
clear_btn,
share_btn,
notes_output,
],
)
if __name__ == "__main__":
demo.launch()
|