C44-Lancaster Farming, Saturday, July 11 1998 Dr. William B. Roush, Associate Professor of Poultry Science Ascites (also known as Pul monary Hypertension Syndrome) is a metabolic disease in broilers that increases in incidence when broiler flocks grow rapidly and de creases in incidence when flock growth rates are restricted. Ascites has become a major cause of eco nomic loss Joint studies between Dr. Bob Wideman at the University of Ar kansas and Dr. Bill Roush at Penn Slate University are being con ducted to examine methods of de tection of birds that have a ten dency to develop ascites. The objective of these studies is to give producers a tool for identification of birds prone to as cites so those birds can be re moved from the genetic popula tion A previous study using arti This unit feat fl Shenandoah P"1 WA I V + a omsion of *HD ■>• Brooders VHli A Division of Feeding Systems 24 Hour Service 7/11/98 (icial neural networks and several physiological measurements has been already reported (Lancaster Farming, November 23, 1998, 42(3) - D2). The current study in volves the monitoring of the daily growth of broilers for evidence of a tendency of the birds to develop ascites Growth is usually described as a cumulative weight over time re sulting in an S-shaped growth curve. Growth can also be de scribed in physics terminology as velocity (growth rate) and accelera tion (the rate of growth rate). Previous work at Penn State on nonlinear dynamics of growth has shown that day-to-day growth velocity and acceleration can be divided into three distinct growth phases The phases can be identi fied as (1) 0-15 days, (2) 16-35 days and (3) 35 to 50 days These growth phases exhibit Thanks to the Richard Rhine Family for choosing Farmer Boy Ag Systems to construct Farmer Boy Ag Systems Inc. 410 East Lincoln Avenue, Myerstown, PA 17067 717-866-7565 » 1-800-845-3374 That is, that an artificial neural network would be able to differen tiate between normal birds and birds with ascites based on indi vidual daily growth velocities and accelerations. Artificial neural networks are computer programs that have been developed to mimic the biological network of neurons present in the biological brain. Artificial neural networks have been shown to be very successful m prediction and classification problems. An experiment was conducted involving 46 male broiler chicks from a breeder pullet line. Growth data form each bird was obtained by manually weighing the birds for each of 50 days on an electron balance. their 44’x500’ Broiler House Ventilation 12’x12’ Generator & Electric Building increased oscillating behavior. Growth responses in the last two phases can be very erratic or cha otic (Lancaster Farming April 22. 1995). A hypothesis was formed, based on previous nonlinear re search on heart rate, that normal birds would exhibit oscillating behavior while ascitic birds would be more steady m growth behav ior. Because of success in diagno sis and prediction of complex data using artificial neural networks, a second hypothesis was proposed. The birds were raised in a pen, provided water, ad libitum, and feed as mash for the first three days and pellets thereafter. Birds surviving to 50 days and prior mortality were examined for the presence or absence of ascites. Of the 46 birds, 13 were identified as having ascites and the remaining 33 were considered normal. Average growth velocity and acceleration and standard deviation values were statistically evaluated as response variables for each growing phase Average values for velocity and acceleration during the third phase were different be tween normal birds and those with ascites. The third phase standard devia tions of velocity and acceleration (reflecting oscillation for velocity and acceleration), were greater for normal birds as compared to birds with ascites. The results suggest that while strains of birds with high growth rates are more prone BUILDINGIHE FUTURE ,‘4^/ * u 14’x21’ Composting Building Hours: Mon -Fn. 7 to 5:30 Sat. 7:30 to Noon WATERING SYSTEMS Poultry contract provided by ie« e ft Fredei Icksburg, PA to ascites, individual birds not get ting ascites (within the high growth strain) have higher growth rates and more oscillation than birds within the strain that are prone to ascites. An artificial neural network (General Regression Neural Net work) was trained to predict as cites based on the day-to-day growth velocity and acceleration Data represented the first, first two, and all three growth phases The responses of birds in all three data sets were successfully classi fied (100%) as having or not hav ing ascites. These results are quite promis ing. In the future, artificial neural networks may have the potential for computerized diagnostic weighing of birds to determine which birds have a tendency to de velop ascites. tlrovers