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13 commits

Author SHA1 Message Date
Luis Aleixo
e4807b6b2c Added method to generate the BLO curve 2022-02-28 11:32:47 +01:00
Luis Aleixo
93a6913c8c Adapted plots to correct expiration 2022-02-25 17:32:56 +01:00
Luis Aleixo
98aba25bd0 merge changes 2022-02-23 10:39:20 +01:00
Luis Aleixo
983078f3a3 Changed baseline model to consider the OMICRON varian 2022-02-23 10:36:49 +01:00
CERN\Andrejh
3acecd1573 fix plot axis 2022-02-22 09:32:11 +01:00
Andrejh
f9e761edab timestep change 2022-02-21 14:43:20 +01:00
Andrejh
4fa3d3b959 add example with 1 SR interaction 2022-02-21 14:43:06 +01:00
Andrejh
d76c7172cd change to 500m3/h 2022-02-21 14:42:18 +01:00
Andrejh
fb266e5a1b change baseline model 2022-02-21 10:57:33 +01:00
Andrejh
96800e04ff change to plot_vD_vs_exposure_time 2022-02-21 10:57:20 +01:00
Andrejh
a594b67528 change to omicron 2022-02-21 10:41:21 +01:00
Andrejh
293f8d6b76 legend updates 2022-02-21 10:41:06 +01:00
Luis Aleixo
330c47823e Added logic to reproduce plots 2022-02-18 17:47:09 +01:00
4 changed files with 537 additions and 1 deletions

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@ -1097,7 +1097,7 @@ class ShortRangeModel:
# Verifies if the given time falls within a short range interaction
if start < time <= finish:
dilution = self.dilutions[index]
jet_origin_concentration = concentration_model.infected.expiration.jet_origin_concentration()
jet_origin_concentration = self.expirations[index].jet_origin_concentration()
# Long range concentration normalized by the virus viral load
long_range_normed_concentration = concentration_model.concentration(time) / concentration_model.virus.viral_load_in_sputum

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@ -0,0 +1,208 @@
""" Title: CARA - COVID Airborne Risk Assessment
Author: A. Henriques et al
Date: 18/02/2021
Code version: 4.0.0
"""
from cara import models, data
from cara.monte_carlo.data import activity_distributions, short_range_expiration_distributions, mask_distributions, virus_distributions, dilution_factor
import cara.monte_carlo as mc
import numpy as np
from cara.monte_carlo.sampleable import CustomKernel
from cara.monte_carlo.data import BLOmodel
import typing
from cara.apps.calculator.model_generator import build_expiration
_VectorisedFloat = typing.Union[float, np.ndarray]
scenario_activity_and_expiration = {
'office': (
'Seated',
# Mostly silent in the office, but 1/3rd of time speaking.
{'Speaking': 1, 'Breathing': 2}
),
'controlroom-day': (
'Seated',
# Daytime control room shift, 50% speaking.
{'Speaking': 1, 'Breathing': 1}
),
'controlroom-night': (
'Seated',
# Nightshift control room, 10% speaking.
{'Speaking': 1, 'Breathing': 9}
),
# 'meeting': (
# 'Seated',
# # Conversation of N people is approximately 1/N% of the time speaking.
# {'Speaking': 1, 'Breathing': self.total_people - 1}
# ),
'callcentre': ('Seated', 'Speaking'),
'library': ('Seated', 'Breathing'),
'training': ('Standing', 'Speaking'),
'lab': (
'Light activity',
#Model 1/2 of time spent speaking in a lab.
{'Speaking': 1, 'Breathing': 1}),
'workshop': (
'Moderate activity',
#Model 1/2 of time spent speaking in a workshop.
{'Speaking': 1, 'Breathing': 1}),
'gym':('Heavy exercise', 'Breathing'),
}
######### Standard exposure models ###########
def exposure_module_without_short_range(activity: str, expiration: str, mask: str):
if mask == 'No mask':
exposure_mask = models.Mask.types['No mask']
else:
exposure_mask = mask_distributions[mask]
exposure_mc = mc.ExposureModel(
concentration_model=mc.ConcentrationModel(
room=models.Room(volume=100, humidity=0.5),
ventilation=models.AirChange(
active=models.SpecificInterval(((0, 24),)),
air_exch=500/100,
),
infected=mc.InfectedPopulation(
number=1,
virus=virus_distributions['SARS_CoV_2_OMICRON'],
presence=mc.SpecificInterval(((8.5, 12.5),(13.5, 17.5),)),
mask=exposure_mask,
activity=activity_distributions[activity],
expiration=build_expiration(expiration),
host_immunity=0.,
),
),
short_range=mc.ShortRangeModel(
presence=[],
expirations=[],
dilutions=[]
),
exposed=mc.Population(
number=14,
presence=mc.SpecificInterval(((8.5, 12.5),(13.5, 17.5),)),
activity=activity_distributions[activity],
mask=exposure_mask,
host_immunity=0.,
),
)
return exposure_mc
def exposure_module_with_short_range(activity: str, expiration: str, mask: str, sr_presence: list, sr_activities: list):
if mask == 'No mask':
exposure_mask = models.Mask.types['No mask']
else:
exposure_mask = mask_distributions[mask]
exposure_mc = mc.ExposureModel(
concentration_model=mc.ConcentrationModel(
room=models.Room(volume=100, humidity=0.5),
ventilation=models.AirChange(
active=models.SpecificInterval(((0, 24),)),
air_exch=500/100,
),
infected=mc.InfectedPopulation(
number=1,
virus=virus_distributions['SARS_CoV_2_OMICRON'],
presence=mc.SpecificInterval(((8.5, 12.5),(13.5, 17.5),)),
mask=exposure_mask,
activity=activity_distributions[activity],
expiration=build_expiration(expiration),
host_immunity=0.,
),
),
short_range=mc.ShortRangeModel(
presence=[models.SpecificInterval(interval) for interval in sr_presence],
expirations=[short_range_expiration_distributions[activity] for activity in sr_activities],
dilutions=dilution_factor(activities=sr_activities,
distance=np.random.uniform(0.5, 1.5, 250000)),
),
exposed=mc.Population(
number=14,
presence=mc.SpecificInterval(((8.5, 12.5),(13.5, 17.5),)),
activity=activity_distributions[activity],
mask=exposure_mask,
host_immunity=0.,
),
)
return exposure_mc
def exposure_module_with_short_range_outdoors(activity: str, expiration: str, mask: str, sr_presence: list, sr_activities: list):
if mask == 'No mask':
exposure_mask = models.Mask.types['No mask']
else:
exposure_mask = mask_distributions[mask]
exposure_mc = mc.ExposureModel(
concentration_model=mc.ConcentrationModel(
room=models.Room(volume=100000, humidity=0.5),
ventilation=models.AirChange(
active=models.SpecificInterval(((0, 24),)),
air_exch=1000000,
),
infected=mc.InfectedPopulation(
number=1,
virus=virus_distributions['SARS_CoV_2_OMICRON'],
presence=mc.SpecificInterval(((8.5, 12.5),)),
mask=exposure_mask,
activity=activity_distributions[activity],
expiration=build_expiration(expiration),
host_immunity=0.,
),
),
short_range=mc.ShortRangeModel(
presence=[models.SpecificInterval(interval) for interval in sr_presence],
expirations=[short_range_expiration_distributions[activity] for activity in sr_activities],
dilutions=dilution_factor(activities=sr_activities,
distance=np.random.uniform(0.5, 1.5, 250000)),
),
exposed=mc.Population(
number=14,
presence=mc.SpecificInterval(((8.5, 12.5),)),
activity=activity_distributions[activity],
mask=exposure_mask,
host_immunity=0.,
),
)
return exposure_mc
def baseline_model(activity: str, expiration: str, mask: str, sr_presence: list, sr_activities: list):
if mask == 'No mask':
exposure_mask = models.Mask.types['No mask']
else:
exposure_mask = mask_distributions[mask]
exposure_mc = mc.ExposureModel(
concentration_model=mc.ConcentrationModel(
room=models.Room(volume=100, humidity=0.5),
ventilation=models.AirChange(
active=models.PeriodicInterval(period=120, duration=120),
air_exch=0.25,
),
infected=mc.InfectedPopulation(
number=1,
virus=virus_distributions['SARS_CoV_2_OMICRON'],
presence=models.SpecificInterval(((8.5, 9.5),)),
mask=exposure_mask,
activity=activity_distributions[activity],
expiration=build_expiration(expiration),
host_immunity=0.,
),
),
short_range=mc.ShortRangeModel(
presence=[models.SpecificInterval(interval) for interval in sr_presence],
expirations=[short_range_expiration_distributions[activity] for activity in sr_activities],
dilutions=dilution_factor(activities=sr_activities,
distance=np.random.uniform(0.5, 1.5, 250000)),
),
exposed=mc.Population(
number=3,
presence=models.SpecificInterval(((8.5, 9.5),)),
activity=activity_distributions[activity],
mask=exposure_mask,
host_immunity=0.,
),
)
return exposure_mc

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@ -0,0 +1,85 @@
""" Title: CARA - COVID Airborne Risk Assessment
Author: A. Henriques et al
Date: 18/02/2021
Code version: 4.0.0
"""
from email.mime import base
from cara.models import ExposureModel, InfectedPopulation
from model_scenarios import *
from scripts import *
from itertools import product
from dataclasses import dataclass
from cara.monte_carlo.data import symptomatic_vl_frequencies
# print('\n<<<<<<<<<<< Peak viral concentration without short range for baseline scenarios >>>>>>>>>>>')
# concentration_curve(models = [exposure_module_without_short_range(activity='Light activity', expiration={"Speaking": 1, "Breathing": 2}, mask='No mask')],
# labels = ['Background (long-range) concentration'],
# labelsDose = ['Dose (long-range)'],
# colors = ['royalblue'],
# linestyles = ['--'],
# thickness = [2])
# print('\n<<<<<<<<<<< Peak viral concentration with short range interactions for baseline scenarios >>>>>>>>>>>')
# concentration_curve(models=[exposure_module_with_short_range(
# activity='Light activity',
# expiration={"Speaking": 1, "Breathing": 2},
# mask='No mask',
# sr_presence=[(10.5, 11.0)],
# sr_activities=['Breathing']),
# exposure_module_without_short_range(
# activity='Light activity',
# expiration={"Speaking": 1, "Breathing": 2},
# mask='No mask',)
# ],
# labels = ['Concentration with short range interactions', 'Background (long-range) concentration'],
# labelsDose = ['Dose (full)', 'Dose (long-range)'],
# colors = ['salmon', 'royalblue'],
# linestyles = ['-', '--'],
# thickness = [2, 2])
# print('\n<<<<<<<<<<< Peak viral concentration with short range interactions for baseline scenarios >>>>>>>>>>>')
# concentration_curve(models=[exposure_module_with_short_range(
# activity='Light activity',
# expiration={"Speaking": 1, "Breathing": 2},
# mask='No mask',
# sr_presence=[(10.5, 11.0)],
# sr_activities=['Speaking']),
# exposure_module_without_short_range(
# activity='Light activity',
# expiration={"Speaking": 1, "Breathing": 2},
# mask='No mask',)
# ],
# labels = ['Concentration with short range interactions', 'Background (long-range) concentration'],
# labelsDose = ['Dose (full)', 'Dose (long-range)'],
# colors = ['salmon', 'royalblue'],
# linestyles = ['-', '--'],
# thickness = [2, 2])
# print('\n<<<<<<<<<<< Dose vs SR exposure time >>>>>>>>>>>')
#Always assume 1h for the short range interactions.
#Always assume that in each model there is only ONE short range interaction.
# plot_vD_vs_exposure_time(exp_models = [
# baseline_model(
# activity='Light activity',
# expiration={"Speaking": 2, "Breathing": 1},
# mask='No mask',
# sr_presence=[(8.5, 9.5)],
# sr_activities=['Breathing']),
# baseline_model(
# activity='Light activity',
# expiration={"Speaking": 2, "Breathing": 1},
# mask='No mask',
# sr_presence=[(8.5, 9.5)],
# sr_activities=['Speaking'])],
# labels = ['Breathing', 'Speaking'],
# colors=['royalblue', 'darkviolet'],
# linestyles=['solid', 'solid'],
# points=20,
# time_in_minutes=True,
# normalize_y_axis=True)
print('\n<<<<<<<<<<< BLO curve >>>>>>>>>>>')
generate_BLO_curve(activity='Speaking')

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@ -0,0 +1,243 @@
""" Title: CARA - COVID Airborne Risk Assessment
Author: A. Henriques et al
Date: 18/02/2021
Code version: 4.0.0
"""
from cara.monte_carlo.data import short_range_expiration_distributions, expiration_distributions, expiration_BLO_factors
from tqdm import tqdm
from matplotlib.patches import Rectangle, Patch
from scipy.spatial import ConvexHull
from model_scenarios import *
from cara.models import *
import cara.monte_carlo as mc
import numpy as np
import matplotlib.pyplot as plt
import matplotlib.lines as mlines
import matplotlib.patches as patches
import matplotlib as mpl
from scipy.interpolate import make_interp_spline
from mpl_toolkits.axes_grid1.inset_locator import mark_inset
######### Plot material #########
np.random.seed(2000)
SAMPLE_SIZE = 250000
TIMESTEP = 0.01
#viral_loads = np.linspace(2, 12, 600)
_VectorisedFloat = typing.Union[float, np.ndarray]
def previous_deposited_exposure_between_bounds(model: ExposureModel, time1: float, time2: float) -> _VectorisedFloat:
"""
The number of virus per m^3 deposited on the respiratory tract
between any two times.
"""
emission_rate_per_aerosol = model.concentration_model.infected.emission_rate_per_aerosol_when_present()
aerosols = model.concentration_model.infected.aerosols()
fdep = model.long_range_fraction_deposited()
f_inf = model.concentration_model.infected.fraction_of_infectious_virus()
diameter = model.concentration_model.infected.particle.diameter
if not np.isscalar(diameter) and diameter is not None:
# we compute first the mean of all diameter-dependent quantities
# to perform properly the Monte-Carlo integration over
# particle diameters (doing things in another order would
# lead to wrong results).
dep_exposure_integrated = np.array(model._long_range_normed_exposure_between_bounds(time1, time2) *
aerosols *
fdep).mean()
else:
# in the case of a single diameter or no diameter defined,
# one should not take any mean at this stage.
dep_exposure_integrated = model._long_range_normed_exposure_between_bounds(time1, time2)*aerosols*fdep
# then we multiply by the diameter-independent quantity emission_rate_per_aerosol,
# and parameters of the vD equation (i.e. f_inf, BR_k and n_in).
return (dep_exposure_integrated * emission_rate_per_aerosol *
f_inf * model.exposed.activity.inhalation_rate *
(1 - model.exposed.mask.inhale_efficiency()))
def concentration_curve(models, labels, labelsDose, colors, linestyles, thickness):
exp_models = [model.build_model(size=SAMPLE_SIZE) for model in models]
start = min(min(model.concentration_model.infected.presence.transition_times())
for model in exp_models)
stop = max(max(model.concentration_model.infected.presence.transition_times())
for model in exp_models)
times = np.arange(start, stop, TIMESTEP)
concentrations = [[np.mean(model.concentration(
t)) for t in times] for model in tqdm(exp_models)]
fig, (ax, ax2) = plt.subplots(2, 1, sharex=True, figsize=(8,6))
for c, color, linestyle, width in zip(concentrations, colors, linestyles, thickness):
ax.plot(times, c, color=color, ls=linestyle, lw=width)
ax2.plot(times, c, color=color, ls=linestyle, lw=width)
# zoom-in / limit the view to different portions of the data
ax.set_ylim(ax.get_ylim()[1]*0.8, ax.get_ylim()[1]) # outliers only
ax2.set_ylim(0, max(concentrations[1])) # most of the data
ax.spines['bottom'].set_visible(False)
ax2.spines['top'].set_visible(False)
ax.xaxis.tick_top()
ax.tick_params(labeltop=False) # don't put tick labels at the top
ax2.xaxis.tick_bottom()
#ax.set_ylim(ax.get_ylim()[0], ax.get_ylim()[1] * 1.2)
# ax.set_ylim(ax.get_ylim()[0], 90)
ax.spines["right"].set_visible(False)
cumulative_doses = [np.cumsum([
np.array(model.deposited_exposure_between_bounds(
float(time1), float(time2))).mean()
for time1, time2 in tqdm(zip(times[:-1], times[1:]))
]) for model in exp_models]
# quantile_05 = [np.cumsum([
# np.quantile(np.array(model.deposited_exposure_between_bounds(
# float(time1), float(time2))), 0.05)
# for time1, time2 in tqdm(zip(times[:-1], times[1:]))
# ]) for model in exp_models]
# quantile_95 = [np.cumsum([
# np.quantile(np.array(model.deposited_exposure_between_bounds(
# float(time1), float(time2))), 0.95)
# for time1, time2 in tqdm(zip(times[:-1], times[1:]))
# ]) for model in exp_models]
plt.xlabel("Time of day", fontsize=14)
plt.ylabel("Mean concentration\n(virions m$^{-3}$)", fontsize=14)
ax1 = ax.twinx()
ax11 = ax2.twinx()
for vd, color, width in tqdm(zip(cumulative_doses, colors, thickness)):
ax1.plot(times[:-1], vd,
color=color, linestyle='dotted', lw=1)
ax11.plot(times[:-1], vd,
color=color, linestyle='dotted', lw=1)
ax1.scatter([times[-1]], [vd[-1]], marker='.', color=color)
ax11.scatter([times[-1]], [vd[-1]], marker='.', color=color)
# zoom-in / limit the view to different portions of the data
ax1.set_ylim(ax1.get_ylim()[1]*0.8, ax1.get_ylim()[1]) # outliers only
ax11.set_ylim(0, max(cumulative_doses[1])) # most of the data
ax11.spines["bottom"].set_visible(False)
# # Plot presence of exposed person
# for i, model in enumerate(models):
# for i, (presence_start, presence_finish) in enumerate(model.exposed.presence.boundaries()):
# plt.fill_between(
# times, quantile_95[i], 0,
# where=(np.array(times) > presence_start) & (np.array(times) < presence_finish),
# color=color[i], alpha=0.1,
# )
# # Plot short range interaction area
# for i, model in enumerate(models):
# for presence in model.short_range.presence:
# (presence_start, presence_finish) = presence.boundaries()
# plt.fill_between(
# times, quantile_95[i],
# where=(np.array(times) > presence_start) & (np.array(times) < presence_finish),
# color='#1f77b4', alpha=0.1,
# )
# ax1.spines["right"].set_linestyle((0, (1, 5)))
# ax1.set_ylabel('Mean cumulative dose\n(infectious virus)', fontsize=14)
#ax1.set_ylim(ax1.get_ylim()[0], ax1.get_ylim()[1] * 1.3)
# ax1.set_ylim(ax1.get_ylim()[0], 40)
complete_labels = labels + [label for label in labelsDose]
complete_colors = colors + [color for color in colors]
complete_linestyles = linestyles + ['dotted' for linestyle in linestyles]
labels_legend = [mlines.Line2D([], [], color=color, label=label, linestyle=linestyle)
for color, label, linestyle in zip(complete_colors, complete_labels, complete_linestyles)]
# for i in range(len(models)):
# print('Scenario: ', labels[i])
# print(
# f"MEAN vD = {cumulative_doses[i][-1]}\n"
# f"5th per = {quantile_05[i][-1]}\n"
# f"95th per = {quantile_95[i][-1]}\n")
ax.legend(handles=labels_legend, loc='upper right')
d = .015 # how big to make the diagonal lines in axes coordinates
# arguments to pass to plot, just so we don't keep repeating them
kwargs = dict(transform=ax.transAxes, color='k', clip_on=False)
ax.plot((-d, +d), (-d, +d), **kwargs) # top-left diagonal
ax.plot((1 - d, 1 + d), (-d, +d), **kwargs) # top-right diagonal
kwargs.update(transform=ax2.transAxes) # switch to the bottom axes
ax2.plot((-d, +d), (1 - d, 1 + d), **kwargs) # bottom-left diagonal
ax2.plot((1 - d, 1 + d), (1 - d, 1 + d), **kwargs) # bottom-right diagonal
plt.show()
def plot_vD_vs_exposure_time(exp_models: typing.List[mc.ExposureModel], labels, colors, linestyles, points: int = 20, time_in_minutes: bool = False, normalize_y_axis: bool = False) -> None:
TIMESTEP = 0.001
concentration_models = [model.concentration_model for model in exp_models]
exposed_models = [model.exposed for model in exp_models]
vDs: typing.List[typing.List[float]] = [[] for _ in exp_models]
presence_intervals = [model.short_range.presence[0].boundaries() for model in exp_models]
start, final = presence_intervals[0]
times = np.linspace(start, final, points)
for finish in tqdm(times):
current_models = [mc.ExposureModel(
concentration_model=cm,
short_range=mc.ShortRangeModel(
presence=[models.SpecificInterval((start, finish), ),],
expirations=em.short_range.expirations,
dilutions=em.short_range.dilutions,
),
exposed=exposed,
) for cm, exposed, em in zip(concentration_models, exposed_models, exp_models)]
for i, m in enumerate(current_models):
vDs[i].append(np.mean(m.build_model(SAMPLE_SIZE).deposited_exposure()))
times = np.linspace(0, 60, points)
for i, vD in enumerate(vDs):
plt.plot(times, vD, color=colors[i], label=labels[i])
# plt.xlim((0, 60))
#if normalize_y_axis:
# plt.ylim((0, 1))
for m in exp_models:
print(np.mean(m.build_model(SAMPLE_SIZE).deposited_exposure()))
plt.xlabel(f'Duration of close-proximity encounter (min)', fontsize=12)
plt.ylabel('Mean cumulative dose\n(infectious virus)', fontsize=12)
plt.legend()
plt.show()
def generate_BLO_curve(activity):
diameters = short_range_expiration_distributions[activity].diameter
BLOcurve = BLOmodel(expiration_BLO_factors[activity]).distribution(diameters
)/BLOmodel(expiration_BLO_factors[activity]).integrate(0.1,100)
# you have to divide by the integral to get the normalized distribution,
# so that you can compare with the normalized histogram
plt.xscale('log')
plt.yscale('log')
plt.plot(diameters,BLOcurve,'.',ms=5)
plt.hist(diameters,bins=100,range=(0,100),density=True)
plt.title(activity)
plt.xlabel("diameters (microns)")
plt.ylabel("Normalized distribution and histogram")
plt.show()