Determination of Chemical Constituents in Processed Green Tea by Near Infrared Analysis

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JARQ 2, 9-53 (199) Determination of Chemical Constituents in Processed Green Tea by Near Infrared Analysis Kenjiro IKEGA YA Abstract Applicability of the near infrared reflectance (NIB.) spectroscopy method was examined to estimate total nitrogen, caffeine, total free amino acids, theanine and tannin (catechines) in processed green tea (Sencha in Japanese) as a substitute for the conventional time-consuming method commonly used in Japan. In was confirmed that these chemical constituents of green tea could be estimated accurately by the NIR spectroscopy method. Discipline: Tea industiy Additional keywords: calibration, near infrared, reflectance (NIB.), spectroscopy Introduction Tea quality has been evaluated traditionally by an organoleptic test in Japan. In ensuring objectivity and consistency or the testing results, that method requires special skills or testers who should accumulate a great deal or experience in practice or testing. Another type or testing method based on chemical analyses to evaluate tea quality is generally complicated and not suited for practical use by manufactories. In the tea market, there is no rule and regulation enforcing to indicate contents of the chemical constituents of Japanese green tea in a label or package. Use or the near infrared reflectance (NIR) spec-. troscopy was proposed by Ben-Gera > at the United States Department of Agriculture, Beltsvill Laboratory, where that method was first applied to analysis or soybean ingredients. Wider applications and practical uses have been developed in the United States and other countries as well to determine protein contents in wheat 3 ' 3 1 >_ It is now recognized that the NIR spectroscopy is a rapid and nonchemically destructive method for quantitative analyses or food compositions. Materials and method 1) Materials In a series or the studies undertaken 6-1 >, 58 kinds of green tea with different tea qualities were subjected to test, among which half or the samples were selected for the calibration test to obtain data pertaining to actual levels and variations or the contents of total nitrogen (T- N), caffeine, total free amino acids (T-FAA), theanine and tannin (Table I). The other half of the samples were used as "unknown samples" to evaluate the accuracy of the calibration curve obtained. Mean values and ranges of the contents of the chemical constituents of these samples are also shown in Table 1. The contents of the constituents were determined as follows: Kjeldahl method for T-N; HPLC method for caffeine; an amino acids analyzer for T-FAA and theanine; and a colorimetric analysis for tannin content. Prior to the NIR measurement, the samples were ground into particles less than.5 mm in size with a cyclon-mill. A Neotec Research Composition Analyzer (Model 635) was used for the NIR measurement. This instrument is equipped by a computer spectrophotometer. which operates in a single beam mode in the wavelength range from I, I to 2,5 nm. Department of Tea Technology, National Research lnsritutc of Vegetables, Ornamental Plants and Tea (2769 Kanaya, Haibara, Shizuoka, 28 Japan) Present address: Sakabc 239-1, Haibara-cho, Shizuoka, 21 - Japan

5 JARQ 2(1) 199 Table I. Mean and range of chemical constituents of green tea samples Constituents For calibration n Mean (/o) Range (/o) T-N 29 5.23.18-6.23 Caffeine 3 2.9 l.9-.68 T-FAA 29 2.91.86-6.53 Thcaninc 3 1.8.- 3.15 Tannin 29 12.1 9.- 18.SO Samples For prediction n Mean (/o) Range (/o) 31 5.1.8-6.7 28 3.6 2.5-.1 29 2.83.86-6.5 28 1.1.1-3.12 29 13.77 9.6-17.1 An lnfraalyzer (Bran Lubbc Ltd.) which is a fixed filter instrument at 19 wavelengths was used 1 measure the contems of T-N, caffeine, T-FAA and theanine of green tea for the application of NJR method to tea quality control by a tea factory. 2nd derivative ufnlll specuum I 2) Calibration and prediction Renectance (R) spectra in the wavelength range of I, JOO to 2,5 nm were determined with 2 nm intervals in the NIR illuminated samples and their records were taken as the second derivative values of the original log (l/r) curve. A stepwise multiplelinear regression was employed in formulating prediction equations, for which values of the wavelength best correlated with the chemically determined contents were used. The NIR spectra of the "unknown samples" were used to formulate NlR prediction equations for the contems of T-N. caffeine, T-FAA, lheanine and tannin of the materials to be tested. Results a.nd discussion An NTR spectrum of a processed green tea sample and its second derivative spectrum are shown in Fig. I. In the region from I, 1 to 2,5 nm, absorption that can be assigned to NH combination gr>up of protein 12 > occurs at I,98, 2,5 and 2,18 nm. In this connection, Krikorian and Mahpour 11 > reported that the bands at 1,96, 2,, 2,5, 2,1 and 2,15 nm were assigned to NH asymmetrical stretching (asym. str.) plus amide II; NH symmetrical stretching (sym. str.) plus amide II ; NH asym. sir. plus amide Ill; NH sym. str. plus amide Ill ; and twice amide I plus amide Ill, respectively. " 11 13 15 17 19 21 23 2SOO W: we h:nsth ( 11111) Fig. I. Spec1ru111 of pulverized green tea OD: Optical density A methyl (-CH 3 ) group has absorption bands at 1,35, 1,69 and 2,26 nm 9 >, while the OH first overtone band in alchohol and phenols occurs in the region of 1,5-1,25 nm with a second overtone band between 95 and 985 11111 >. The format ion of hydrogen bands results in a displacement of the fundamemal and hence overtone bands 1 1,92 and l,oio nm. For comparison, Curico and Pet1y 2 > observed a band at 1,9 nm in the spectrum of liquid water, and Hecht and Wood 5 > reported a band at 1,95 nm, which was in their view attributed to water bands. Table 2 presents resul!s of the predictions with multiple regression equations as well as related statistical parameters to indicate the accuracy of the determinations of the chemical constituents estimated by the NIR method. An equation to predic1

51 C:......,. c c u in-m,-...1.fl \ \V'IV\V\ 8b OoOOO I I I I NNr---inN ' \... ' () "'... + determinations of chemical constituents was formulated from the selection of calibration curve which showed a highest multiple correlation coefficient for the "unknown samples". The least standard error and the bias in predicting constituents contents of the "unknown samples" were calculated on the basis of the calibrations of T-N, caffeine, T-FAA, thcaninc and tannin in the relevant stepwise regression analyses. Following is the equation formula employed : A% = ko + ktd 2 (logl/r)>.1 + k2d 2 (1og l/r) >.2 + knd 2 (logl/r) >.n; where A is chemical compound of the processed green tea, k 1, k2, k3 are constants; and d 2 (logl/r) >-1 are second derivative values of original log (1/R) at wavelengths of >-1, >-2, }-3, >sn, respectively. The first specific wavelengths for these calibrations were designated at 1,978 nm for estimating T-N contents; 1,692 nm for caffeine contents; 1,988 run for T-FAA contents; 2,162 nm for theanine contents; and 1,58 nm for tannin contents in green tea, respectively. Those first wavelengths have a greater correlation coefficient with the contents of chemical constituents and also with absorbances presented in the second derivative spectrum. ""' " C:.2 :; ::, O' LSJ....... ---- t,;s.d u-o Fig. 2. 5 T FAA (%) by chemical analysis NIR predicted T-N content plo1ted against the chemical values in green tea

52 The absorption bands may be assigned as follows: at 1,978 nm (for T-N) to NH asym. str. plus amide II; at 1,692 nm (for caffeine) to C-H str. first overtone of - CH 3 group; at 1,988 nm (for T-FAA) to NH asym. str. plus amide 11; at 2,162 nm (for thea- JARQ 2(1) 199 nine) to 2 x amide I plus amide n; and at 1,58 nm (for tannin) to OH 1st overtone. The predicted contents of the component consti tuents estimated from the above calibrations for the "unknown samples" are shown in Figs. 2-6. 5 3 " C 'ii 2 " C 'E "... -= 3 2 2 3 s Caffeine(%) by chemical analysis 2 J Theanine (%) by chemical an:,jysis Fig. 3. NIR predicted caffeine content ploued Fig. 5. NIR predicted theanine content ploucd 7 2 6 z..:. s.s C C 1 s 6 T -N (%) by Kjeldahl method 7 2 Tannin (%) by chemical analysis Fig.. NIR predicted T-FAA content ploued Fig. 6. NJR predicted tannin content plotted against the chemical values in green tea

53 In these figures, the NIR prediction values are ploued against the actual contents of chemical constituents. The standard errors of prediction (SEP), correlation coefficients between the chemical values and the NIR values (r) and mean differences between the actual contents and the NIR predicted values (d) are as follows; for T-N, SEP =.16%, r =.982, d =.5; forcaffeine,sep =.35%,r =.912,d =.6; fort-faa,sep =.38%,r =.97,d = -.75; for thcanine, SEP =.282%, r =.935, d = -.35; and for tannin, SEP = I.22%, r =.852, d = -.15, respectively. In order to evaluate tile accuracy of prediction, a statistical analysis by a 't test was undertaken regarding the mean differences between the actual contents and the NIR predicted values. The t-values of the predicted equations are given in Table 2. Since the significant limit at I O'/o level for n = 27 and 3 is 2.77 and 2.75, respectively, there is no significant difference in the mean values. From the above result, it is concluded that contents of T-N, caffeine, T-F AA, theanine and tannin of green tea can be estimated accurately with the NI R method. References I) Ben-Gera, t. & Norris, K. H. (1986) : Oetcrmina1io:n of moisture contcm of soybeans by direct spec- 1ropho1ome1ry. fs11rael J. Agr. Res. 18, 125-132. 2) Curico, J. A. & Peuy, C. C. (195 1): The near infrared absorption spectrum of liquid water. /. Optical Soc. Amer., 1, 32-3. 3) Downey, G. & Byrne, S. (1983): Determination of protein and moist ure In ground wheat by near infrared renectance spectroscopy. ls11roel J. Food Sci. Tee/mo!., 7, 135-16. ) Goddu, R. F. (196) : Near-infrared spectropho1ome- 1ry. /11 Advances in analytical chemistry and ins1rumen- 1ation I, 37-17. SJ Hech1. K. T. & Wood. D. L. /1956) : The near infrared spectrum of the pep1idc group. Proc. Royal Soc.. 235, 17-188. 6) lkcgaya, K. et al. (1985) : Near infrared spcc1ropho1- me1ric analysis of total nitrogen comem in green tea. Nippon Shokultin Kogyo Oakkaislti, 32, 553-559 lln Japanese wit h English summary]. 7) lkegaya, K. et al. (1985): Near infrared spectrophoto metric analysis or total free amino acids in green 1ea. In Abstract of 61st Ann. Meet. Jpn. Soc. of Soil Sci. and Plant Nutr. 6 fin Japanese). 8) lkegaya, K. et al. (1986) : Near infrared spec1ropho1- metric analysis of theanine in green 1ea. In Abs1ract of 63rd Ann. Meet. of Jpn. Tea-Technician's Assoc. Tea Res. J., 63, 75-76 (l n Japanese]. 9) lkegaya K. el al. (1987): Near infrared spectra of caffeine and its related compound and 1heir application to dc1ermi na1ion of caffeine content in green lea. Nippon Shokuhi11 Kogyo Oakkaishi, 3, 25-258. 1) lkegaya, K. et al. (1987): Near infrared spec1ropho1- me1ric analysis of tannin. In Abstract of 65th Ann. Meet. or Jpn. Tea-Technician's Assoc. Tea Res. J., 6S, 17 (In Japanese). 11) Krikorian, S. E. & Mahpour, M. (1973): The iden1ifica1ion and origin of N-H ovenone and combina1ion bands in 1he near-infrared spec1ra of simple primary and secondary amides. Spectrochimica Acta., 29A, 1233-)26. 12) Law, D. P. & Tkachuk, R. (1977): Near infrared diffuse reneciance spectra of wheal and wheat components. Cereal Chem., S, 256-265. 13) Osborne, B. G. el al. (1982): The development of universal calibrations for measurement of pro1ein and moisture in UK home-grown wheat by near-infrared rencc1ion analysis. J. Sci. Food Agr., 33,'736-7. 1) Williams, P. C. (1979): Screening wheat for protein and hardness by near infrared spectroscopy. Cereal Chem., 56, 169-172. (Received for publication, Feb. 1, 1989)