Tuesday, April 19, 2016

Drug Modeling Analysis

Our project was specifically looking at modeling the absorption, circulation, and metabolism of morphine. Morphine is an addictive drug (opioid) used clinically as a powerful painkiller. Due to the chemical makeup of morphine, users develop a tolerance for this drug. This causes them to need more and more per each subsequent dosage. Because everyone's body has a different tolerance level for morphine, we were not able to nail down any of our coefficients in our model.

There are some averages published by the University of Lausanne in Switzerland on their pharmacokinetics research site (http://sepia.unil.ch/pharmacology/index.php?id=85). The oral bioavailability (absorption rate) is around 25%, so our k_1 value would be .25. Our k_2 value is the elimination rate, which is defined as either V_max / K_m or as the clearance / volume of distribution. Given that the clearance is 72L/h and the volume of distribution is 245L/70kg, we get a k_2 value of 20.571kg/hr. This volume of distribution is based off a 70kg man, so as we stated before, results vary greatly from person to person.

**Idea taken from Olivia Nguyen and Xiaoyu Shi's paper on modeling the absorption, circulation, and metabolism of tirapazamine.

Drug Modeling (Simplified)

Friday, February 26, 2016

Yellowstone Wolf Lab




YearTime (years)Wolf PopulationBirthsDeathsElk KilledAvailable Data
Births/PopulationDeaths/PopulationElk Killed/Population

19951219243GYAt(0)=140.42857142860.095238095242.047619048

1996237149124GYA
0.37837837840.24324324323.351351351

19973804916234GYA
0.61250.22.925

19984833610197GYA
0.43373493980.12048192772.373493976

19995723814276GYA
0.52777777780.19444444443.833333333

200061197114281Both
0.59663865550.11764705882.361344538

20017132436311Both
0.32575757580.045454545452.356060606

20028148654291Both
0.43918918920.027027027031.966216216

200391745916313GYA
0.33908045980.091954022991.798850575

2004101695920241Both
0.3491124260.11834319531.426035503

2005111182225244Both
0.1864406780.21186440682.06779661

2006121366010219Both
0.44117647060.073529411761.610294118

200713171646272Both
0.37426900580.03508771931.590643275

2008141242217463Both
0.17741935480.13709677423.733870968

200915962310302Both
0.23958333330.10416666673.145833333

20101697389211Both
0.39175257730.092783505152.175257732

201117983410267Both
0.34693877550.10204081632.724489796

201218832015159Both
0.24096385540.18072289161.915662651

20131995417193Both
0.43157894740.073684210532.031578947

201420104415148Both
0.39423076920.048076923081.423076923








Average0.38275472990.11564434432.342890475








Variance0.013811571610.0038305775550.5263891894


This is the data we got from http://www.nps.gov/yell/learn/nature/wolfreports.htm which is the Yellowstone National Park website. They had yearly reports for wolf population, including births, deaths, and elk killed. (Population is total population, not change in population) We got the coefficient for W by averaging the number of deaths/population per year. This number signifies the natural decay of wolves. Since we had the change in population for that year, wolf population, and the natural death rate, we could solve for the coefficient for E (which is elk killed, not total elk population) for each year, then took the average to get a result of .07789.

dW/dt = -.116W + .07789E 

Since we don't have any information about the total elk population, we only have one equation for this predator-prey system of equations model. This equation is unsolvable because of the reason stated before. There is not enough historical data recorded on Yellowstone elk.


The following graph shows the number of wolf births and deaths per year in the Greater Yellowstone Area. In all but one of the years, births outnumbered deaths. However, due to emigration, wolf population in the area does not reflect continuous growth as we would expect looking at this graph.

We are allowed to use the mean as an estimator for our coefficient because our histogram of deaths per population is relatively close to normal. If the distribution was not close to normal, then the mean would not be an effective estimator for the wolf death rate per year.
 







This is a bar graph of the total number of wolves in the Greater Yellowstone Area. This population includes pups older than 6 months to adult wolves. These population numbers were taken in December of the year listed.


Sunday, February 7, 2016

Analysis/Results

We set out with the goal of tracking the amount of height change in a pitcher's rise ball. We collected video evidence from three of Coe's softball pitchers at one of their indoor practices. We analyzed ten videos for each of the three pitchers using Tracker, a video analysis program. Tracker enabled us to plot the position of the ball in flight through each of the video's frames. We then created position time graphs for all thirty videos. However, we ran into difficulties trying to analyze our 3-dimensional calibration of 43 ft (mound to plate) in Tracker, which is a 2-dimensional program. Because our filming had to take place at an angle due to limited space constraints, we could not incorporate the z-axis into our calibration of the videos, so we were not able to track the change on the y-axis effectively. While we originally intended to compare the change on the y-axis between pitchers, we could only compare their x-axis motion.

We found that the pitches had cubic fits, so we analyzed each of the coefficients per pitcher. We calculated and plotted the averages for each pitcher. We had large standard deviations and variances for each pitcher, so a larger sample size would have been beneficial to obtain a more accurate sample mean. We found that Arran's rise balls traveled with a higher velocity earlier than both Kalyn's and Mariah's. Mariah's pitches sped up faster than Kalyn's as they got closer to the plate. While we were not able to analyze what we originally intended to, our data still led to relevant insight for the pitchers' rise balls.

Pitcher Comparison




Arran
Pitch # A-value B-value C-value D-value
1 356.000 -66.610 38.920 0.218
2 454.500 -154.900 45.200 -0.893
3 332.900 -76.980 38.980 -0.664
4 498.200 -177.600 44.810 -0.530
5 336.900 -92.800 42.760 -0.632
6 250.700 -29.370 36.400 0.634
7 407.100 -11.270 45.700 0.345
8 466.700 -138.700 47.790 0.481
9 366.300 -94.590 42.040 0.838
10 419.000 -114.200 42.530 0.794
Average 388.830 -95.702 42.513 0.059
Standard Deviation 74.589 52.850 3.552 0.668
Variance 5563.589 2793.100 12.616 0.446





Mariah
Pitch # A-value B-value C-value D-value
1 441.400 -196.300 46.660 -0.992
2 354.600 -44.450 31.700 0.266
3 184.000 -7.857 28.800 -0.300
4 284.100 -19.220 32.490 0.565
5 275.900 -2.838 30.530 0.964
6 285.900 -52.290 33.070 0.178
7 339.300 -112.300 42.150 0.116
8 282.800 -56.260 35.780 0.142
9 304.900 -23.470 33.120 1.163
10 489.500 -135.500 41.660 0.283
Average 324.240 -65.049 35.596 0.238
Standard Deviation 87.789 63.296 5.882 0.607
Variance 7706.929 4006.381 34.596 0.369





Kalyn
Pitch # A-value B-value C-value D-value
1 306.300 -88.300 36.340 -0.611
2 459.000 -152.300 45.840 0.219
3 217.700 -33.680 24.750 0.103
4 244.100 -27.460 34.680 0.327
5 227.300 -25.260 31.180 0.407
6 214.500 -19.580 29.830 0.651
7 240.800 -34.660 33.110 -0.146
8 213.000 -18.570 29.590 -0.394
9 360.500 -55.010 36.380 0.755
10 381.900 -74.910 33.770 0.913
Average 286.510 -52.973 33.547 0.222
Standard Deviation 86.561 42.196 5.587 0.496
Variance 7492.892 1780.489 31.215 0.246

Position-Time Graphs

Arran

Videos

Arran



Kalyn