This message is in MIME format. If you are reading this text, then your mail package doesn't fully support MIME - there may be a newer release available from your supplier. Created using the !Marcel mail package from ANT Ltd <[log in to unmask]> --80-1904222667-882491400:#-1543471909 Content-Type: TEXT/PLAIN; CHARSET=US-ASCII On 16 Dec 1997 David Langridge described an ingenious method which he has devised for calibrating his response to PD medication. His method involves screwing a 2inch bolt up a long thread- obviously a task requiring some flexibility and dexterity. (Nice one, David). Entirely by co-incidence, I have been considering whether I could devise a more objective measurement of my response to PD drugs, for use in my tablet analysis prprogram. As some of you will know, I currently require the user of my program to describe his/her condition on a subjective -2 to -2 scale. This works alright, but it cannot be cross-referenced to any other tests,- a valuable attribute. (The same could be said about David's bolt). During the Recent Remacemide drug evaluation programme, I was required to perform a number of tasks to measure my condition, and in particular the 'tapping test' in which the patient has to tap (using one finger) as many times as possible within a 10-second time period. In order to play around with the tapping concept, I wrote a very simple program to emulate the little box which the neurologists use. Initial results suggest that I get a count of about 70 taps in 10 seconds when I in an 'on' condition, and around 50 taps when I am in an 'off' condition. This may be enough to work with. Now we come to the problem, My little program is written for the Acorn RISC PC, an excellent conputer which is so good, it is not compatible with the IBM PC ! What is needed is for one of you folk out there to write an IBM PC based version of the program (And maybe a MAC- based version?). We can then carry out a few experiments to see how the tapping test performs To make it easier, I list below the print-out of my program, written in BBC BASIC 5. In addition I have attached to this Email an attachment with what I call a logic chart ! How about it - Is anyone preparesd to try? =========================================== 10 REM >TapTest 20 CLS 30 ON ERROR REPORT:PRINT " Error line= ";ERL:END 40 DIM results%(50,150) 50 REM TRACE ON 60 goes%=0 70 REPEAT 80 score%=-1 : interval%=0 : duration%=1000 90 PRINT"Start tapping on the Alt Key when you are ready" 100 REPEAT UNTIL INKEY-6 : REM -6 = L/Hand Alt Key 110 starttime%=TIME 120 WHILE interval%< duration% 130 score%+=1 140 PRINT TAB(0,3 ) score% 150 REPEAT UNTIL NOT (INKEY-6) 160 REPEAT UNTIL INKEY-6 170 interval%=TIME - starttime% 180 results%(goes%,score%)=interval% 190 ENDWHILE 200 PRINTTAB(0,5)"PRESS RETURN TO GO AGAIN- 'A' to see analysis" 210 REPEAT UNTIL INKEY-74 OR INKEY-66 OR FALSE 220 IF INKEY-66 PROCanalyse :REPEAT UNTIL NOT (INKEY-66) 230 IF INKEY-74 CLS: 240 UNTIL FALSE 250 END 260 270 DEF PROCanalyse 280 FOR I%=0 TO score%: PRINT TAB(0) I%;" ";results%(0,I%):NEXT 290 PROCsaveCSV 300 ENDPROC 310 320 DEF PROCsaveCSV 330 name$="" 340 SYS "OS_Byte",21,0 350 INPUT"Enter Filename",name$ 360 XB=OPENOUT("ADFS::HardDisc4.$.WIMP.ParkTab.TapData."+name$) 370 FOR I%=0 TO goes% 380 FOR K%=1 TO score% 390 str$=CHR$(&22)+STR$(results%(I%,K%))+CHR$(&22) 400 BPUT#XB,str$ 410 NEXT K% 420 CLOSE#XB 430 NEXT I% 440 ENDPROC 450 460 DEF FNnum(n):REM To setup a number for a SAVE in CSV format 470 @%=&01020305 480 =STR$(n) 490 : 500 =========================================== -- Brian Collins <[log in to unmask]> --80-1904222667-882491400:#-1543471909 Content-Type: IMAGE/GIF; NAME=FloChart1 Content-Transfer-Encoding: BASE64 R0lGODdh0QL1AecAAAAAABERESIiIjMzM0QAAFUREWYiInczMwAARBERVSIi ZjMzd0QARFURVWYiZnczd4gAAJkREaoiIrszM8wAAN0REe4iIv8zM4gARJkR VaoiZrszd8wARN0RVe4iZv8zdwBEABFVESJmIjN3M0REAFVVEWZmInd3MwBE RBFVVSJmZjN3d0RERFVVVWZmZnd3d4hEAJlVEapmIrt3M8xEAN1VEe5mIv93 M4hERJlVVapmZrt3d8xERN1VVe5mZv93dwCIABGZESKqIjO7M0SIAFWZEWaq Ine7MwCIRBGZVSKqZjO7d0SIRFWZVWaqZne7d4iIAJmZEaqqIru7M8yIAN2Z Ee6qIv+7M4iIRJmZVaqqZru7d8yIRN2ZVe6qZv+7dwDMABHdESLuIjP/M0TM 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